TW201944353A - Object image recognition system and object image recognition method - Google Patents

Object image recognition system and object image recognition method Download PDF

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TW201944353A
TW201944353A TW107112455A TW107112455A TW201944353A TW 201944353 A TW201944353 A TW 201944353A TW 107112455 A TW107112455 A TW 107112455A TW 107112455 A TW107112455 A TW 107112455A TW 201944353 A TW201944353 A TW 201944353A
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foreground
value
image
cumulative
pixel
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TW107112455A
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TWI676965B (en
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林韋宏
董行偉
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大眾電腦股份有限公司
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V10/00Arrangements for image or video recognition or understanding
    • G06V10/20Image preprocessing
    • G06V10/25Determination of region of interest [ROI] or a volume of interest [VOI]
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V10/00Arrangements for image or video recognition or understanding
    • G06V10/20Image preprocessing
    • G06V10/26Segmentation of patterns in the image field; Cutting or merging of image elements to establish the pattern region, e.g. clustering-based techniques; Detection of occlusion
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06VIMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
    • G06V10/00Arrangements for image or video recognition or understanding
    • G06V10/40Extraction of image or video features
    • G06V10/44Local feature extraction by analysis of parts of the pattern, e.g. by detecting edges, contours, loops, corners, strokes or intersections; Connectivity analysis, e.g. of connected components

Abstract

An object image recognition system for recognizing a targeted object image in an image and an object image recognition method thereof are disclosed. The targeted object image has a minimum pixel length M. The system has an image processing module, a cumulative values calculation module, a morphology processing module and a screening module. The image is processed by the image processing module for generating a first binary image. The cumulative values calculation module calculates a cumulative value for each of the pixel points of the first binary image by add a foreground value of M pixel points horizontally adjacent to a pixel points having the foreground value. The morphology processing module morphology processes the first binary image based on the cumulative values and labeling at least one region of interest. The screening module identifies the targeted object image from the at least one region of interest.

Description

物件影像辨識系統及物件影像辨識方法Object image recognition system and object image recognition method

本發明係關於一種物件影像辨識系統及物件影像辨識方法,特別關於一種辨識由移動中之影像擷取裝置擷取之影像中至少一目標物件影像之物件影像辨識系統及物件影像辨識方法。The invention relates to an object image recognition system and an object image recognition method, in particular to an object image recognition system and an object image recognition method that recognize at least one target object image in an image captured by a moving image capturing device.

目前停車場或道路監視的攝影機都固定設置於某處(如:停車場出入口),於定點擷取進入該攝影機取像範圍的物件,故單一攝影機只能擷取固定監視區域的影像。若攝影機移動,該攝影機所擷取的影像中,特定物件的影像會變形,造成後續影像辨識系統無法辨視該物件影像的情況發生。在此以車牌為例,依據法規,車牌有固定的尺寸,當攝影機架設於定點,其擷取進入該攝影機取像範圍的車輛其車牌的尺寸比例,且此類物件影像辨識系統大多只能在單一影像中辨識一個車牌,在使用上有改進之必要。 現有技術中,已經存在分析動態影像中之物件影像的技術,但此類影像分析技術中僅對所擷取之畫面中的局部範圍影像分析,而非分析所擷取畫面中的全部範圍,亦有改進之必要。At present, the cameras for parking lot or road surveillance are fixedly set at a certain place (such as the entrance and exit of the parking lot), and the objects that enter the imaging range of the camera are captured at a fixed point, so a single camera can only capture the image of the fixed surveillance area. If the camera moves, the image of the specific object in the image captured by the camera will be deformed, resulting in the situation that the subsequent image recognition system cannot recognize the image of the object. Here, the license plate is taken as an example. According to the regulations, the license plate has a fixed size. When the photographic frame is set at a fixed point, it captures the size ratio of the license plate of the vehicle that enters the range of the camera. Most of these object image recognition systems can only be used in To identify a license plate in a single image, it is necessary to improve its use. In the prior art, technologies for analyzing object images in dynamic images already exist. However, in such image analysis technologies, only a local range image analysis in the captured image is performed instead of analyzing the entire range in the captured image. There is a need for improvement.

本發明之主要目的係在提供一種辨識由移動中之影像擷取裝置擷取之影像中至少一目標物件影像之物件影像辨識系統。The main object of the present invention is to provide an object image recognition system for identifying at least one target object image in an image captured by a moving image capturing device.

本發明之另一主要目的係在提供一種辨識由移動中之影像擷取裝置擷取之影像中至少一目標物件影像之物件影像辨識方法。Another main object of the present invention is to provide an object image recognition method for identifying at least one target object image in an image captured by a moving image capturing device.

為達成上述之目的,本發明之物件影像辨識系統與影像擷取裝置電性連接,物件影像辨識系統用於辨識由移動中之影像擷取裝置擷取之影像中之至少一目標物件影像,其中至少一目標物件影像包括預定像素長度M,其中M為自然數。本發明之物件影像辨識系統包括影像處理模組、累計值計算模組、形態學處理模組以及物件篩選模組。影像處理模組對影像進行影像處理以產生第一二值化影像,其中第一二值化影像之各像素點為前景值或背景值。於第一二值化影像中,累計值計算模組累計與每一具有前景值之像素點水平相鄰之M個像素點對應之前景值而形成該像素點之前景累計值。形態學處理模組依據該些前景累計值對第一二值化影像進行形態學處理而產生第二二值化影像,並從第二二值化影像中標記至少一興趣框。物件篩選模組由至少一興趣框中找出該至少一目標物件影像。In order to achieve the above-mentioned object, the object image recognition system of the present invention is electrically connected to an image capture device. The object image recognition system is used to identify at least one target object image in an image captured by a moving image capture device. At least one target object image includes a predetermined pixel length M, where M is a natural number. The object image recognition system of the present invention includes an image processing module, a cumulative value calculation module, a morphological processing module, and an object screening module. The image processing module performs image processing on the image to generate a first binarized image, where each pixel of the first binarized image is a foreground value or a background value. In the first binarized image, the cumulative value calculation module accumulates the previous scene values corresponding to M pixels that are horizontally adjacent to each pixel point having a foreground value to form a cumulative foreground value of the pixel. The morphological processing module performs morphological processing on the first binarized image according to the accumulated foreground values to generate a second binarized image, and marks at least one interest frame from the second binarized image. The object filtering module finds the at least one target object image from at least one interest box.

本發明另提供一種物件影像辨識方法,用於辨識由移動中之影像擷取裝置擷取之影像中至少一目標物件影像,其中至少一目標物件影像包括預定像素長度M,其中M為自然數。本發明之物件影像辨識方法包括下列步驟:藉由影像處理模組對影像進行影像處理以產生第一二值化影像,其中第一二值化影像之各像素點為一前景值或一背景值。藉由累計值計算模組於第一二值化影像中,累計與每一具有該前景值之一像素點水平相鄰之M個像素點對應之前景值而形成該像素點之一前景累計值。藉由形態學處理模組依據該些前景累計值對第一二值化影像進行形態學處理而產生第二二值化影像,並從第二二值化影像中標記至少一興趣框;以及,藉由物件篩選模組由至少一興趣框中找出至少一目標物件影像。The invention further provides an object image recognition method for identifying at least one target object image in an image captured by a moving image capturing device, wherein at least one target object image includes a predetermined pixel length M, where M is a natural number. The object image recognition method of the present invention includes the following steps: image processing is performed on an image by an image processing module to generate a first binary image, wherein each pixel of the first binary image is a foreground value or a background value . The cumulative value calculation module in the first binarized image accumulates the previous scene value corresponding to each of the M pixels that are horizontally adjacent to each pixel with the foreground value to form a cumulative foreground value of the pixel. . Performing a morphological processing on the first binarized image according to the foreground cumulative values by a morphological processing module to generate a second binarized image, and marking at least one interest box from the second binarized image; and, An object filtering module is used to find at least one target object image from at least one interest box.

本發明之物件影像辨識系統及物件影像辨識方法藉由累計值計算模組於該第一二值化影像中,累計與每一具有該前景值之一像素點水平相鄰之M個像素點對應之該前景值而形成該像素點之一前景累計值,並利用物件篩選模組刪除尺寸特徵不符的興趣框的辨識方式,可降低本發明之物件影像辨識系統及物件影像辨識方法計算量並提升辨識率。此外,本發明之物件影像辨識系統及物件影像辨識方法係用於辨識由移動中之影像擷取裝置擷取之一影像,只要移動中之影像擷取裝置擷取之一影像中的興趣框中的影像特性符合車牌的特徵,即可確認該興趣框為車牌,故本發明之物件影像辨識系統及物件影像辨識方法可在單一影像中辨識至少一或多個車牌,提高了本發明之物件影像辨識系統及物件影像辨識方法的應用性。According to the object image recognition system and the object image recognition method of the present invention, in the first binarized image, a cumulative value calculation module correspondingly accumulates M pixels that are horizontally adjacent to each pixel having the foreground value. The foreground value is used to form a foreground cumulative value of the pixel point, and the object filtering module is used to delete the recognition method of the interest frame that does not match the size characteristics, which can reduce the calculation amount of the object image recognition system and the object image recognition method of the present invention and improve Recognition rate. In addition, the object image recognition system and object image recognition method of the present invention are used to identify an image captured by a moving image capturing device, as long as the interest frame in an image captured by a moving image capturing device is captured. The image characteristics are consistent with the characteristics of the license plate, and the interest frame can be confirmed as the license plate. Therefore, the object image recognition system and the object image recognition method of the present invention can identify at least one or more license plates in a single image, which improves the object image of the present invention. Applicability of recognition system and object image recognition method.

為能讓 貴審查委員能更瞭解本發明之技術內容,特舉較佳具體實施例說明如下。以下請參考圖1A與圖1B關於本發明之物件影像辨識系統之一實施例之硬體架構圖與計算模組於第一二值化影像累計特徵值之一實施例之示意圖。In order to make your reviewing committee better understand the technical content of the present invention, specific preferred embodiments are described below. Please refer to FIG. 1A and FIG. 1B for a schematic diagram of an embodiment of an object image recognition system of the present invention and a schematic diagram of an embodiment in which a computing module accumulates feature values in a first binary image.

如圖1A所示,在本實施例中,本發明之物件影像辨識系統1與影像擷取裝置100電性連接,且本發明之物件影像辨識系統1與用於辨識由移動中之影像擷取裝置100擷取之一影像110中至少一目標物件影像,其中該至少一目標物件影像包括一預定像素長度M,其中M10,且M為自然數。在本實施例中,至少一目標物件影像為一車牌影像,且車牌影像之預定像素長度M為100個像素點,此M的數量會依據操作的影像大小而不同。As shown in FIG. 1A, in this embodiment, the object image recognition system 1 of the present invention is electrically connected to the image capture device 100, and the object image recognition system 1 of the present invention is used to identify image captures in motion. The device 100 captures at least one target object image in an image 110, wherein the at least one target object image includes a predetermined pixel length M, where M 10, and M is a natural number. In this embodiment, at least one target object image is a license plate image, and the predetermined pixel length M of the license plate image is 100 pixels, and the number of M will be different according to the size of the operated image.

如圖1A與圖1B所示,在本實施例中,本發明之物件影像辨識系統1包括影像處理模組10、累計值計算模組20、形態學處理模組30、物件篩選模組40以及水平投影計算模組50,其中影像處理模組10對影像110進行一影像處理以產生一第一二值化影像12,其中第一二值化影像之各像素點為一前景值或一背景值。根據本發明之一具體實施例,影像處理模組10先對影像110進行一影像縮小處理。在此須注意的是,影像110不縮小也適用,本實施例縮小影像110只是為了運算快速,該影像縮小處理將影像110的長度與寬度各縮小四分之一(原影像為1920x1080,可依照需求做縮放),此外若影像110為彩色影像,影像處理模組10會先將影像110轉為一灰階影像,再進行影像縮小處理。As shown in FIGS. 1A and 1B, in this embodiment, the object image recognition system 1 of the present invention includes an image processing module 10, a cumulative value calculation module 20, a morphological processing module 30, an object screening module 40, and Horizontal projection calculation module 50, in which the image processing module 10 performs an image processing on the image 110 to generate a first binary image 12, wherein each pixel of the first binary image is a foreground value or a background value . According to a specific embodiment of the present invention, the image processing module 10 first performs an image reduction process on the image 110. It should be noted here that the image 110 is also applicable without reduction. This embodiment reduces the image 110 only for fast calculation. This image reduction process reduces the length and width of the image 110 by a quarter each (the original image is 1920x1080, which can be (Requires scaling). In addition, if the image 110 is a color image, the image processing module 10 first converts the image 110 into a grayscale image, and then performs image reduction processing.

根據本發明之一具體實施例,影像處理模組10可利用索貝爾(Sobel)或其他邊緣偵測演算法對影像110進行垂直邊緣化處理,並將垂直邊緣化處理後的影像110進行影像二值化處理以產生前景值與背景值。在本實施例中,影像處理模組10依據垂直邊緣化處理後的影像110中各像素點的梯度值是否超過100對影像110進行影像二值化處理,但本發明不以此實施例為限,影像處理模組10對影像110進行影像二值化處理的梯度閾值可依系統設計者依實際使用需求更動,此外索貝爾(Sobel)或其他邊緣偵測演算法為影像邊緣化處理的習知技術,故不再此贅述其細節。According to a specific embodiment of the present invention, the image processing module 10 may use Sobel or other edge detection algorithms to perform vertical edge processing on the image 110, and perform image two on the image 110 after the vertical edge processing. Value processing to generate foreground and background values. In this embodiment, the image processing module 10 performs image binarization processing on the image 110 according to whether the gradient value of each pixel in the image 110 after the vertical edge processing exceeds 100, but the present invention is not limited to this embodiment. The image processing module 10 can perform image binarization on the image 110. The gradient threshold can be changed according to the actual needs of the system designer. In addition, Sobel or other edge detection algorithms are used for image edge processing. Technology, so I wo n’t repeat the details here.

在本實施例中,如圖1A與圖1B所示,於第一二值化影像12中累計值計算模組20累計與每一具有前景值之一像素點水平相鄰之M個像素點對應之前景值而形成該像素點之一前景累計值。累計值計算模組20具體計算方式說明如下,在此以像素點121為例,如圖1B所示,於第一二值化影像12中,由上而下由左而右依序找一個有前景值的像素點位置,如本例中像素點121,並以此點為中心,累計值計算模組20累計像素點121右側延伸之個像素點對應之前景值而形成像素點之一右前景累計值,在本實施例中M為100,所以累計值計算模組20累計像素點121右側延伸50個像素點並累計這50個像素點各自對應之前景值而形成像素點121之右前景累計值R。同時,累計值計算模組20累計像素點121左側延伸50個像素點,並累計這50個像素點各自對應之前景值而形成像素點121之左前景累計值L,其中像素點121的前景累計值為右前景累計值R與左前景累計值L之總和。In this embodiment, as shown in FIG. 1A and FIG. 1B, the cumulative value calculation module 20 in the first binarized image 12 accumulates M pixels that are horizontally adjacent to each pixel point having a foreground value. The previous scene value forms a foreground cumulative value of the pixel. The specific calculation method of the accumulated value calculation module 20 is described below. Here, taking the pixel point 121 as an example, as shown in FIG. 1B, in the first binarized image 12, find one in order from top to bottom and left to right. The pixel position of the foreground value, such as the pixel point 121 in this example, with this point as the center, the cumulative value calculation module 20 extends to the right of the cumulative pixel point 121 The number of pixels corresponds to the previous scene value to form a right foreground cumulative value of one of the pixels. In this embodiment, M is 100, so the cumulative value calculation module 20 accumulates 50 pixels on the right side of the pixel 121 and accumulates the 50 pixels. The points each correspond to the previous scene value to form a right foreground cumulative value R of the pixel point 121. At the same time, the cumulative value calculation module 20 accumulates 50 pixels on the left side of the pixel point 121, and accumulates the 50 foreground points corresponding to the previous scene value to form the left foreground total value L of the pixel point 121, of which the foreground value of the pixel point 121 is accumulated The value is the sum of the right foreground cumulative value R and the left foreground cumulative value L.

如圖1A與圖1B所示,若右前景累計值R與左前景累計值L兩者差距太大,就表示像素點121可能是垂直邊緣變化的特徵點,比如是車牌中最左邊或最右邊的文字邊緣或車牌的垂直邊緣。此時,根據本發明之具體實施例,若L>5且R≤1,累計值計算模組20停止累計像素點121右側之前景累計值,改累計像素點121左側延伸至少M個像素點(直到遇到連續兩個或以上的像素點的前景值為0,例如像素點121若左側延100個像素點後,其該第100個像素點之左側第101個的像素點之前景值仍為1則繼續累計,直到連續遇到兩個像素點之前景值皆為0)對應之該些前景值而形成像素點121之前景累計值;若R>5且L≤1,累計值計算模組20停止累計像素點121左側之前景累計值,改累計像素點121右側延伸至少M個像素點(直到遇到連續兩個或以上的像素點的前景值為0)對應之該些前景值而形成像素點121之前景累計值。若發生此情況,以此方式計算,像素點121的前景累計值在之後的二值化有機會被保留,不因計算的前景累計值太少而被清除,以便明顯地找出影像110中垂直邊緣變化的像素點121,讓之後的CCL所選的興趣框更能接近車牌的邊框,減少於會取到不完整的車牌的機會。As shown in Figures 1A and 1B, if the difference between the right foreground cumulative value R and the left foreground cumulative value L is too large, it means that the pixel point 121 may be a characteristic point with a vertical edge change, such as the leftmost or rightmost of the license plate The edge of the text or the vertical edge of the license plate. At this time, according to a specific embodiment of the present invention, if L> 5 and R≤1, the cumulative value calculation module 20 stops accumulating the foreground cumulative value on the right side of the pixel point 121 and changes the cumulative pixel point left side to extend at least M pixels ( Until the foreground value of two or more consecutive pixels is encountered, for example, if pixel 121 extends 100 pixels to the left, the foreground value of the 101 pixel to the left of the 100 pixel is still 1 continues to accumulate until the scene value is 0 before successively encountering two pixels.) The corresponding foreground values form the scene foreground cumulative value of pixel point 121. If R> 5 and L≤1, the accumulated value calculation module 20 Stop accumulating the foreground foreground value on the left side of the pixel point 121, and change the accumulated right side of the pixel point 121 to extend at least M pixels (until the foreground value of two or more consecutive pixels is encountered) corresponding to these foreground values. Foreground scene cumulative value of pixel point 121. If this happens, calculated in this way, the binarized foreground value of the pixel 121 may be retained in the subsequent binarization, and is not cleared because the calculated foreground cumulative value is too small, so as to clearly find the vertical in the image 110 The pixels 121 with edge changes make the interest box selected by the CCL closer to the border of the license plate, reducing the chance of obtaining an incomplete license plate.

根據本發明另一實施例,累計值計算模組20累計像素點121右側延伸50個像素點後(含)至遇到連續兩個像素點或兩個以上的像素點的前景值為0,例如累計值計算模組20累計到像素點121右側延伸之第50個像素點的前景值為0,且該第50個像素點右側之像素點(也就是像素點121右側之第51個像素點)的前景值仍為0,累計值計算模組20即停止累計。According to another embodiment of the present invention, after the cumulative value calculation module 20 extends 50 pixels from the right side of the cumulative pixel point 121 (inclusive), the foreground value is 0 after encountering two consecutive pixels or more, for example, The cumulative value calculation module 20 accumulates the foreground value of the 50th pixel point extending to the right of the pixel point 121, and the pixel point to the right of the 50th pixel point (that is, the 51st pixel point to the right of the pixel point 121) The foreground value of is still 0, and the accumulated value calculation module 20 stops accumulating.

根據本發明另一實施例,若累計值計算模組20累計像素點121右側延伸計算右側累計前景值R’時,於計算過程中若右側已計算超過10個像素點且R’的數值小於2則累計值計算模組20停止累計像素點121右側之延伸計算,改累計像素點121左側延伸M個像素點,或改累計像素點121左側延伸至少M個像素點(直到遇到連續兩個或以上的像素點的前景值為0)。According to another embodiment of the present invention, if the cumulative value calculation module 20 extends the right side of the cumulative pixel point 121 to calculate the right cumulative foreground value R ′, during the calculation process, if more than 10 pixels have been calculated on the right side and the value of R ′ is less than 2 Then the cumulative value calculation module 20 stops the extended calculation of the right side of the cumulative pixel point 121, and changes the left side of the cumulative pixel point 121 by M pixels, or changes the left side of the cumulative pixel point 121 by at least M pixels (until two consecutive or The foreground value of the above pixels is 0).

同時,累計值計算模組20累計像素點121左側延伸之左前景累計值L’時,在計算過程中若左側已計算超過10個像素點且L’的數值小於2則累計值計算模組20停止累計像素點121左側之延伸計算,改累計像素點121右側延伸M個像素點,或改累計像素點121右側延伸至少M個像素點(直到遇到連續兩個或以上的像素點的前景值為0)。At the same time, when the cumulative value calculation module 20 accumulates the left foreground cumulative value L 'extending from the left side of the pixel 121, during the calculation process, if more than 10 pixels have been calculated on the left side and the value of L' is less than 2, the cumulative value calculation module 20 Stop the calculation of the extension of the left side of the cumulative pixel point 121, and change the right side of the cumulative pixel point 121 to extend M pixels, or change the right side of the cumulative pixel point 121 to extend at least M pixels (until the foreground value of two or more consecutive pixels is encountered Is 0).

在此須注意的是,累計值計算模組20會跟前述相同的計算方式與判斷方法完成第一二值化影像12中每一個具有前景值之像素點的前景累計值,以供形態學處理模組30進行後續影像處理運算。如圖1A所示,在本實施例中,形態學處理模組30依據累計值計算模組20計算出第一二值化影像12中每一個具有前景值之像素點的前景累計值對第一二值化影像進行一形態學處理而產生一第二二值化影像,並從第二二值化影像中標記至少一興趣框。It should be noted here that the cumulative value calculation module 20 will complete the foreground cumulative value of each pixel with foreground value in the first binary image 12 in the same calculation method and judgment method as described above for morphological processing. The module 30 performs subsequent image processing operations. As shown in FIG. 1A, in this embodiment, the morphological processing module 30 calculates the cumulative foreground value of each pixel with foreground value in the first binary image 12 according to the cumulative value calculation module 20 to the first The binarized image is subjected to a morphological process to generate a second binarized image, and at least one interest frame is marked from the second binarized image.

在本實施例中,形態學處理模組30會對第一二值化影像12進行一影像二值化處理、一影像膨脹處理以及一興趣框標記處理,其中形態學處理模組30依據第一二值化影像12中各像素點的前景累計值是否超過18(此閥值會依操作的影像大小而有不同)。對第一二值化影像12進行影像二值化處理而產生第二二值化影像,其中第一二值化影像12中前景累計值超過18的像素點其灰階值轉為255,第一二值化影像12前景累計值小於18的像素點其灰階值轉為0,但本發明不以此實施例為限,形態學處理模組30對第一二值化影像12進行影像二值化處理的前景累計值閾值可依系統設計者依實際使用需求更動。In this embodiment, the morphological processing module 30 performs an image binarization process, an image expansion process, and an interest frame labeling process on the first binarized image 12, wherein the morphology processing module 30 is based on the first Whether the cumulative foreground value of each pixel in the binarized image 12 exceeds 18 (this threshold will vary depending on the size of the image being operated). The image binarization processing is performed on the first binarized image 12 to generate a second binarized image. In the first binarized image 12, the grayscale value of the pixels whose cumulative cumulative value exceeds 18 in the first binarized image 12 is changed to 255. The grayscale value of pixels whose cumulative value of the foreground of the binarized image 12 is less than 18 turns to 0, but the present invention is not limited to this embodiment. The morphological processing module 30 performs binarization on the first binarized image 12 The threshold value of the cumulative value of the foreground processing can be changed according to the actual use requirements of the system designer.

在本實施例中,形態學處理模組30掃描第二二值化影像中每一像素點,若該像素點為0的8-近鄰中只要有一個像素點的值為大於10,就將該像素點的值轉為255,而此步驟即為影像膨脹處理,藉此把有可能因運算而被斷開得車牌文字連回來。在此須注意的是,本發明之形態學處理模組30乃對影像中符合膨脹條件的像素點進行膨脹處理,也就是說本發明之形態學處理模組30係對車牌內斷開的文字,可以做到只計算一次但達到傳統需二次膨脹處理,對單一點雜訊也只會被放大一倍,不像傳統的二次膨脹處理,會被放大兩倍,藉以避免影像中的雜訊被放大,造成後續圈選興趣框或數值分析的困擾。形態學處理模組30完成影像膨脹處理後,形態學處理模組30進一步於第二二值化影像中框出至少一興趣框,在本實施例中,至少一興趣框為矩形,物件篩選模組40再由至少一興趣框中找出至少一目標物件影像。In this embodiment, the morphological processing module 30 scans each pixel in the second binarized image. If there is a pixel with a value greater than 10 in the 8-nearest neighbor of which the pixel is 0, then The value of the pixel is converted to 255, and this step is the image expansion process, so that the license plate text that may be disconnected due to the calculation is connected back. It should be noted here that the morphological processing module 30 of the present invention performs expansion processing on pixels that meet the expansion conditions in the image, that is to say, the morphological processing module 30 of the present invention is based on the broken text in the license plate. It can be calculated only once but traditionally requires secondary expansion processing, and single-point noise will only be doubled. Unlike traditional secondary expansion processing, it will be doubled to avoid noise in the image. The information is enlarged, causing confusion in subsequent selection of interest boxes or numerical analysis. After the morphological processing module 30 completes the image expansion processing, the morphological processing module 30 further frames at least one interest frame in the second binarized image. In this embodiment, at least one interest frame is rectangular, and the object filtering mode The group 40 finds at least one target object image from at least one interest frame.

根據本發明之一具體實施例,因至少一目標物件影像為車牌影像,各國車牌影像具有一預定寬長比例(例如台灣車牌從機車車牌到汽車車牌,其寬度會大於長度,其寬長比從1.85:1~2.4:1),在本實施例中車牌影像之預定寬長比例為2.5:1,在此例中M為100,因此寬長比例為100:40(本發明不以此比例為限)。物件篩選模組40由形態學處理模組30所圈選的至少一興趣框中找出寬長比符合100:40左右之至少一目標興趣框。此時再利用水平投影計算模組50依序計算至少一目標興趣框中的所參考的累計值計算模組20的一水平投影累計值,以供物件篩選模組40由至少一目標興趣框中找出水平投影累計值高於K之目標物件影像,例如興趣框中每一水平面之水平投影累計大於300,則該水平的K值就加一,其中K為大於2的自然數。若每一水平投影累計小於20則Z值加一,其中Z≧0。再統計此一目標興趣框所計算的K是否大於5(此數值會依操作的影像大小而不同),若K小於5或Z大於K則此一目標興趣框則捨棄,因為車牌影像係由多個英文字母與數字組成,水平投影計算模組50計算某一目標興趣框的水平投影累計值若太小,則表示該目標興趣框中的資訊與車牌影像應出現的資訊不相符,或者就算該目標興趣框是車牌影像,但其影像中的文字無法辨識,故物件篩選模組40可以將水平投影累計值若太小的該些目標興趣框刪除,而剩餘的目標興趣框就是目標物件影像,此時可將目標物件影像進一步做字元切割處理,以便目標物件影像做文字辨識。According to a specific embodiment of the present invention, since at least one target object image is a license plate image, the license plate image of each country has a predetermined width-to-length ratio. 1.85: 1 ~ 2.4: 1), the predetermined width-to-length ratio of the license plate image in this embodiment is 2.5: 1, and in this example M is 100, so the width-to-length ratio is 100: 40 (the present invention does not use this ratio as limit). The object screening module 40 finds at least one target interest frame with an aspect ratio of about 100: 40 from at least one interest frame circled by the morphological processing module 30. At this time, the horizontal projection calculation module 50 is used to sequentially calculate a horizontal projection cumulative value of the referenced cumulative value calculation module 20 in at least one target interest frame, so that the object screening module 40 may use the at least one target interest frame. Find the image of the target object whose cumulative horizontal projection is higher than K. For example, if the cumulative horizontal projection of each horizontal plane in the interest box is greater than 300, then the K value of that level is increased by one, where K is a natural number greater than 2. If each horizontal projection is less than 20, the Z value is increased by one, where Z ≧ 0. Then count whether the calculated K of this target interest box is greater than 5 (this value will vary depending on the size of the image being operated). If K is less than 5 or Z is greater than K, this target interest box will be discarded because the license plate image is composed of multiple images. English letters and numbers, the horizontal projection calculation module 50 calculates the cumulative horizontal projection value of a target interest box. If it is too small, it means that the information in the target interest box does not match the information that should appear on the license plate image. The target interest box is a license plate image, but the text in the image cannot be recognized. Therefore, the object filtering module 40 can delete the target interest boxes whose horizontal projection cumulative value is too small, and the remaining target interest boxes are the target object images. At this time, the target object image can be further subjected to character cutting processing so that the target object image can be used for text recognition.

需注意的是,上述各個模組除可配置為硬體裝置、軟體程式、韌體或其組合外,亦可藉電路迴路或其他適當型式配置;並且,各個模組除可以單獨之型式配置外,亦可以結合之型式配置。一個較佳實施例是各模組皆為軟體程式儲存於記憶體上,藉由物件影像辨識系統1中的一處理器(圖未示)執行各模組以達成本發明之功能。此外,本實施方式僅例示本發明之較佳實施例,為避免贅述,並未詳加記載所有可能的變化組合。然而,本領域之通常知識者應可理解,上述各模組或元件未必皆為必要。且為實施本發明,亦可能包含其他較細節之習知模組或元件。各模組或元件皆可能視需求加以省略或修改,且任兩模組間未必不存在其他模組或元件。It should be noted that in addition to the above modules, which can be configured as hardware devices, software programs, firmware, or a combination thereof, they can also be configured by circuit loops or other appropriate types; in addition, each module can be configured separately. , Can also be combined with the type configuration. A preferred embodiment is that each module is a software program stored in a memory, and a processor (not shown) in the object image recognition system 1 executes each module to achieve the functions of the invention. In addition, this embodiment only exemplifies the preferred embodiments of the present invention. In order to avoid redundant descriptions, all possible combinations of changes are not described in detail. However, those of ordinary skill in the art should understand that the above modules or components are not necessarily necessary. In order to implement the present invention, other more detailed conventional modules or components may also be included. Each module or component may be omitted or modified as required, and there may not be other modules or components between any two modules.

以下請一併參考圖1A、圖1B、圖2與圖3,其中圖2關於本發明之物件影像辨識方法之一實施例之步驟流程圖,圖3為物件篩選之步驟流程圖。本發明之物件影像辨識方法,應用於物件影像辨識系統1,如圖1A與圖1B所示,物件影像辨識系統1用於辨識由移動中之影像擷取裝置100擷取之一影像110中至少一目標物件影像。如圖2所示,本發明之物件影像辨識方法主要包括步驟S1至步驟S4。以下將詳細說明本發明之物件影像辨識方法之第一實施例之各個步驟。Please refer to FIG. 1A, FIG. 1B, FIG. 2 and FIG. 3 together. FIG. 2 is a flowchart of steps of an embodiment of an object image recognition method of the present invention, and FIG. 3 is a flowchart of steps of object screening. The object image recognition method of the present invention is applied to an object image recognition system 1. As shown in FIGS. 1A and 1B, the object image recognition system 1 is used to identify at least one of the images 110 captured by the moving image capture device 100. A target object image. As shown in FIG. 2, the object image recognition method of the present invention mainly includes steps S1 to S4. Hereinafter, each step of the first embodiment of the object image recognition method of the present invention will be described in detail.

步驟S1:對影像進行一影像處理以產生第一二值化影像。Step S1: Perform an image processing on the image to generate a first binary image.

影像處理模組10對影像110進行一影像處理以產生一第一二值化影像12,其中第一二值化影像之各像素點為一前景值或一背景值。根據本發明之一具體實施例,影像處理模組10先對影像110進行一影像縮小處理,該影像縮小處理將影像110的長度與寬度各縮小四分之一(但不以此為限),此外若影像110為彩色影像,影像處理模組10會先將影像110轉為一灰階影像,再進行影像縮小處理。在此須注意的是,影像110不縮小也適用,本實施例縮小影像110只是為了運算快速。The image processing module 10 performs an image processing on the image 110 to generate a first binary image 12, wherein each pixel of the first binary image is a foreground value or a background value. According to a specific embodiment of the present invention, the image processing module 10 first performs an image reduction process on the image 110, and the image reduction process reduces the length and width of the image 110 by a quarter each (but not limited to this), In addition, if the image 110 is a color image, the image processing module 10 first converts the image 110 into a grayscale image, and then performs image reduction processing. It should be noted here that the image 110 is also applicable without being reduced. In this embodiment, the image 110 is reduced only for fast calculation.

根據本發明之一具體實施例,影像處理模組10利用索貝爾(Sobel)或其他邊緣偵測演算法對影像110進行垂直邊緣化處理,並將垂直邊緣化處理後的影像110進行影像二值化處理來產生前景值與背景值。在本實施例中,影像處理模組10依據垂直邊緣化處理後的影像110中各像素點的梯度值是否超過100對影像110進行影像二值化處理,但本發明不以此實施例為限,影像處理模組10對影像110進行影像二值化處理的梯度閾值可依系統設計者依實際使用需求更動,此外索貝爾(Sobel)或其他邊緣偵測演算法為影像邊緣化處理的習知技術,故不再此贅述其細節。According to a specific embodiment of the present invention, the image processing module 10 performs vertical edge processing on the image 110 using Sobel or other edge detection algorithms, and performs image binary processing on the image 110 after the vertical edge processing. Processing to generate foreground and background values. In this embodiment, the image processing module 10 performs image binarization processing on the image 110 according to whether the gradient value of each pixel in the image 110 after the vertical edge processing exceeds 100, but the present invention is not limited to this embodiment. The image processing module 10 can perform image binarization on the image 110. The gradient threshold can be changed according to the actual needs of the system designer. In addition, Sobel or other edge detection algorithms are used for image edge processing. Technology, so I wo n’t repeat the details here.

步驟S2:於該第一二值化影像中,累計值計算模組累計與每一具有該前景值之一像素點水平相鄰之M個像素點對應之該前景值而形成該像素點之一前景累計值。Step S2: In the first binarized image, the cumulative value calculation module accumulates the foreground value corresponding to each of the M pixels that are horizontally adjacent to each pixel point having the foreground value to form one of the pixels. Cumulative foreground value.

在本實施例中,如圖1A與圖1B所示,於第一二值化影像12中累計值計算模組20累計與每一具有前景值之一像素點水平相鄰之M個像素點對應之前景值而形成像素點之一前景累計值。累計值計算模組20具體計算方式說明如下,在此以像素點121為例,如圖1B所示,於第一二值化影像12中,由上而下由左而右依序找一個有前景值的像素點位置,如本例中像素點121,並以此點為中心,累計值計算模組20累計像素點121右側延伸之個像素點對應之前景值而形成像素點之一右前景累計值,在本實施例中M為100,所以累計值計算模組20累計像素點121右側延伸50個像素點,並累計這50個像素點各自對應之前景值而形成像素點121之右前景累計值R。同時,累計值計算模組20累計像素點121左側延伸50個像素點,並累計這50個像素點各自對應之前景值而形成像素點121之左前景累計值L,其中像素點121的前景累計值為右前景累計值R與左前景累計值L之總和。In this embodiment, as shown in FIG. 1A and FIG. 1B, the cumulative value calculation module 20 in the first binarized image 12 accumulates M pixels that are horizontally adjacent to each pixel point having a foreground value. The previous scene value forms a foreground cumulative value of one pixel. The specific calculation method of the accumulated value calculation module 20 is described below. Here, taking the pixel point 121 as an example, as shown in FIG. 1B, in the first binarized image 12, find one in order from top to bottom and left to right. The pixel position of the foreground value, such as the pixel point 121 in this example, with this point as the center, the cumulative value calculation module 20 extends to the right of the cumulative pixel point 121 The number of pixels corresponds to the previous scene value to form a right foreground cumulative value of one of the pixels. In this embodiment, M is 100, so the cumulative value calculation module 20 extends the right side of the pixel point 121 by 50 pixels and accumulates the 50 points. The pixel points correspond to the previous scene values to form a right foreground cumulative value R of the pixel point 121. At the same time, the cumulative value calculation module 20 accumulates 50 pixels on the left side of the pixel point 121, and accumulates the 50 foreground points corresponding to the previous scene value to form the left foreground total value L of the pixel point 121, of which the foreground value of the pixel point 121 is accumulated The value is the sum of the right foreground cumulative value R and the left foreground cumulative value L.

如圖1A與圖1B所示,若右前景累計值R與左前景累計值L兩者差距太大,就表示像素點121可能是垂直邊緣變化的特徵點,比如說:是車牌最左邊或最右邊的文字邊緣或車牌的垂直邊緣,此時,根據本發明之具體實施例,若L>5,且R<=1,累計值計算模組20停止累計像素點121右側之前景累計值,改累計像素點121左側延伸至少M個像素點對應之該前景值而形成像素點121之前景累計值;若R>5,且L<=1,累計值計算模組20停止累計像素點121左側之前景累計值,改累計像素點121右側延伸至少M個像素點對應之前景值而形成像素點121之前景累計值。若發生情況,以此方式計算,像素點121在之後的二值化有機會被保留,不因計算的前景累計值太少而被清除,以便明顯地找出影像110中垂直邊緣變化的像素點121,讓之後的CCL所選的興趣框更能接近車牌的邊框,減少於會取到不完整的車牌的機會。在此須注意的是,累計值計算模組20會跟前述相同的計算方式與判斷方法完成第一二值化影像12中每一個像素點的前景累計值。As shown in Figures 1A and 1B, if the difference between the right foreground cumulative value R and the left foreground cumulative value L is too large, it means that the pixel 121 may be a characteristic point with a vertical edge change, for example: it is the leftmost or most The right edge of the text or the vertical edge of the license plate. At this time, according to a specific embodiment of the present invention, if L> 5 and R <= 1, the cumulative value calculation module 20 stops accumulating the cumulative foreground value on the right side of the pixel 121 and changes The accumulated value of the foreground value corresponding to at least M pixels on the left side of the accumulated pixel point 121 forms the accumulated value of the foreground of the pixel point 121; if R> 5 and L <= 1, the accumulated value calculation module 20 stops accumulating the left side of the pixel point 121 The foreground cumulative value is changed by accumulating at least M pixels on the right side of the cumulative pixel point 121 corresponding to the previous scene value to form the foreground value of the pixel point 121. If something happens, calculate in this way, the subsequent binarization of the pixel point 121 may be retained, and it will not be cleared because the calculated foreground cumulative value is too small, so as to clearly find the pixels with vertical edge changes in the image 110 121, to make the interest box selected by the CCL closer to the border of the license plate, reducing the chance of obtaining an incomplete license plate. It should be noted here that the cumulative value calculation module 20 will complete the foreground cumulative value of each pixel in the first binarized image 12 in the same calculation method and judgment method as described above.

根據本發明另一實施例,累計值計算模組20累計像素點121右側延伸50個像素點後(含)至遇到連續兩個像素點或兩個以上的像素點的前景值為0,例如累計值計算模組20累計到像素點121右側延伸之第50個像素點的前景值為0,且該第50個像素點右側之像素點(也就是像素點121右側之第51個像素點)的前景值仍為0,累計值計算模組20即停止累計。According to another embodiment of the present invention, after the cumulative value calculation module 20 extends 50 pixels from the right side of the cumulative pixel point 121 (inclusive), the foreground value is 0 after encountering two consecutive pixels or more, for example, The cumulative value calculation module 20 accumulates the foreground value of the 50th pixel point extending to the right of the pixel point 121, and the pixel point to the right of the 50th pixel point (that is, the 51st pixel point to the right of the pixel point 121) The foreground value of is still 0, and the accumulated value calculation module 20 stops accumulating.

根據本發明另一實施例,若累計值計算模組20累計像素點121右側延伸計算右側累計前景值R’時, 於計算過程中若右側已計算超過10個像素點且R’的數值小於2則累計值計算模組20停止累計像素點121右側之延伸計算,改累計像素點121左側延伸至少M個像素點,或改累計像素點121左側延伸至少M個像素點(直到遇到連續兩個或以上的像素點的前景值為0)。According to another embodiment of the present invention, if the cumulative value calculation module 20 extends the right side of the accumulated pixel point 121 to calculate the right side cumulative foreground value R ′, during the calculation process, if more than 10 pixels have been calculated on the right side and the value of R ′ is less than 2 Then the cumulative value calculation module 20 stops the extended calculation of the right side of the accumulated pixel point 121, and changes the left side of the accumulated pixel point 121 to extend at least M pixels, or changes the left side of the accumulated pixel point 121 to extend at least M pixels (until it encounters two consecutive pixels) Or more pixels have a foreground value of 0).

同時,累計值計算模組20累計像素點121左側延伸之左前景累計值L’時,在計算過程中若左側已計算超過10個像素點且L’的數值小於2則累計值計算模組20停止累計像素點121左側之延伸計算,改累計像素點121右側延伸至少M個像素點,或改累計像素點121右側延伸至少M個像素點(直到遇到連續兩個或以上的像素點的前景值為0)。At the same time, when the cumulative value calculation module 20 accumulates the left foreground cumulative value L 'extending from the left side of the pixel 121, during the calculation process, if more than 10 pixels have been calculated on the left side and the value of L' is less than 2, the cumulative value calculation module 20 Stop the calculation of the left side of the accumulated pixel point 121, and change the right side of the accumulated pixel point 121 to extend at least M pixels, or change the right side of the accumulated pixel point 121 to extend at least M pixels (until the prospect of two or more consecutive pixels) Value is 0).

步驟S3:依據該些前景累計值對該第一二值化影像進行形態學處理而產生一第二二值化影像,並從第二二值化影像中標記至少一興趣框。Step S3: Morphologically process the first binarized image according to the foreground cumulative values to generate a second binarized image, and mark at least one interest frame from the second binarized image.

如圖1A所示,在本實施例中,形態學處理模組30依據累計值計算模組20計算出第一二值化影像12中每一個具有前景值之像素點的前景累計值對第一二值化影像進行一形態學處理而產生一第二二值化影像,並從第二二值化影像中標記至少一興趣框。As shown in FIG. 1A, in this embodiment, the morphological processing module 30 calculates the cumulative foreground value of each pixel with foreground value in the first binary image 12 according to the cumulative value calculation module 20 to the first The binarized image is subjected to a morphological process to generate a second binarized image, and at least one interest frame is marked from the second binarized image.

在本實施例中,形態學處理模組30會對第一二值化影像12進行一影像二值化處理、一影像膨脹處理以及一興趣框標記處理,其中形態學處理模組30依據第一二值化影像12中各像素點的前景累計值是否超過18(此閥值會依操作的影像大小而有不同)。對第一二值化影像12進行影像二值化處理而產生第二二值化影像,其中第一二值化影像12中前景累計值超過18的像素點其灰階值轉為255,第一二值化影像12前景累計值小於18的像素點其灰階值轉為0,但本發明不以此實施例為限,形態學處理模組30對第一二值化影像12進行影像二值化處理的前景累計值閾值可依系統設計者依實際使用需求更動。In this embodiment, the morphological processing module 30 performs an image binarization process, an image expansion process, and an interest frame labeling process on the first binarized image 12, wherein the morphology processing module 30 is based on the first Whether the cumulative foreground value of each pixel in the binarized image 12 exceeds 18 (this threshold will vary depending on the size of the image being operated). The image binarization processing is performed on the first binarized image 12 to generate a second binarized image. In the first binarized image 12, the grayscale value of the pixels whose cumulative cumulative value exceeds 18 in the first binarized image 12 is changed to 255. The grayscale value of pixels whose cumulative value of the foreground of the binarized image 12 is less than 18 turns to 0, but the present invention is not limited to this embodiment. The morphological processing module 30 performs binarization on the first binarized image 12 The threshold value of the cumulative value of the foreground processing can be changed according to the actual use requirements of the system designer.

在本實施例中,形態學處理模組30掃描第二二值化影像中每一像素點,若該像素點為0的8-近鄰中只要有一個像素點的值為大於10,就將該像素點的值轉為255,而此步驟即為影像膨脹處理,藉此把有可能因運算而被斷開的車牌文字連回來。在此須注意的是,本發明之形態學處理模組30乃對影像中符合膨脹條件的像素點進行膨脹處理,也就是說本發明之形態學處理模組30係對車牌內斷開的文字,可以做到只計算一次但達到傳統需二次膨脹處理,對單一點雜訊也只會被放大一倍,不像傳統的二次膨脹處理,會被放大兩倍,藉以避免影像中的雜訊被放大,造成後續圈選興趣框或數值分析的困擾。形態學處理模組30完成影像膨脹處理後,形態學處理模組30進一步於第二二值化影像中框出至少一興趣框,在本實施例中,至少一興趣框為矩形。In this embodiment, the morphological processing module 30 scans each pixel in the second binarized image. If there is a pixel with a value greater than 10 in the 8-nearest neighbor of which the pixel is 0, then The value of the pixel is converted to 255, and this step is an image expansion process, thereby connecting the license plate text that may be disconnected due to the calculation. It should be noted here that the morphological processing module 30 of the present invention performs expansion processing on pixels that meet the expansion conditions in the image, that is to say, the morphological processing module 30 of the present invention is based on the broken text in the license plate. It can be calculated only once but traditionally requires secondary expansion processing, and single-point noise will only be doubled. Unlike traditional secondary expansion processing, it will be doubled to avoid noise in the image. The information is enlarged, causing confusion in subsequent selection of interest boxes or numerical analysis. After the morphological processing module 30 completes the image expansion processing, the morphological processing module 30 further frames at least one interest frame in the second binarized image. In this embodiment, the at least one interest frame is rectangular.

步驟S4:由該至少一興趣框中找出該至少一目標物件影像。Step S4: Find the at least one target object image from the at least one interest frame.

物件篩選模組40再由至少一興趣框中找出至少一目標物件影像。根據本發明之一具體實施例,因至少一目標物件影像為車牌影像,各國的車牌影像具有一預定寬長比例,例如台灣車牌從機車車牌到汽車車牌,其寬度會大於長度,其寬長比從1.85:1~2.4:1,在本實施例中車牌影像之預定寬長比例為2.5:1,在此例中M為100,因此寬長比例為100:40(本發明不以此比例為限)。物件篩選模組40由形態學處理模組30所圈選的至少一興趣框中找出寬長比符合(接近)100:40左右之至少一目標興趣框(步驟S41)。此時再利用水平投影計算模組50依序計算至少一目標興趣框中的所參考的累計值計算模組20的一水平投影累計值,以供物件篩選模組40由至少一目標興趣框中找出水平投影累計值高於K之目標物件影像,其中K為大於2的自然數(步驟S42)。The object filtering module 40 finds at least one target object image from at least one interest frame. According to a specific embodiment of the present invention, since at least one target object image is a license plate image, the license plate image of each country has a predetermined ratio of width to length. From 1.85: 1 to 2.4: 1, the predetermined width-to-length ratio of the license plate image in this embodiment is 2.5: 1, and in this example M is 100, so the width-to-length ratio is 100: 40 (the present invention does not use this ratio as limit). The object screening module 40 finds at least one target interest frame whose aspect ratio matches (close to) about 100: 40 from at least one interest frame circled by the morphological processing module 30 (step S41). At this time, the horizontal projection calculation module 50 is used to sequentially calculate a horizontal projection cumulative value of the referenced cumulative value calculation module 20 in at least one target interest frame, so that the object screening module 40 may use the at least one target interest frame. Find a target object image whose horizontal projection cumulative value is higher than K, where K is a natural number greater than 2 (step S42).

例如每一水平投影累計大於300,則該水平的K值就加一,其中K為大於2的自然數。若水平投影累計小於20則Z值加一,Z≧0。再統計此一目標興趣框所計算的K是否大於5(此數值會依操作的影像大小而不同),若K小於5或Z大於K則此一目標興趣框則捨棄,因為車牌影像係由多個英文字母與數字組成,因此水平投影計算模組50計算某一目標興趣框的水平投影累計值若太小,則表示該目標興趣框中的資訊與車牌影像應出現的資訊不相符,或者就算該目標興趣框是車牌影像,但其影像中的文字無法辨識,故物件篩選模組40可以將水平投影累計值若太小的該些目標興趣框刪除,而剩餘的目標興趣框就是目標物件影像,此時可將目標物件影像進一步做字元切割處理,以便目標物件影像做文字辨識。For example, the cumulative value of each horizontal projection is greater than 300, the K value of the level is increased by one, where K is a natural number greater than 2. If the horizontal projection total is less than 20, the Z value is increased by one, and Z ≧ 0. Then count whether the calculated K of this target interest box is greater than 5 (this value will vary depending on the size of the image being operated). If K is less than 5 or Z is greater than K, this target interest box will be discarded because the license plate image is composed of multiple images. English letters and numbers, so the horizontal projection calculation module 50 calculates the cumulative horizontal projection value of a target interest box if it is too small, it means that the information in the target interest box does not match the information that should appear on the license plate image, or even if The target interest frame is an image of a license plate, but the text in the image cannot be recognized. Therefore, the object filtering module 40 can delete the target interest frames if the cumulative horizontal projection value is too small, and the remaining target interest frames are the target object images. At this time, the target object image can be further subjected to character cutting processing, so that the target object image can be used for text recognition.

本發明之物件影像辨識系統1及物件影像辨識方法藉由累計值計算模組於第一二值化影像12中,累計與每一具有該前景值之一像素點121水平相鄰之M個像素點對應之該前景值而形成像素點121之一前景累計值,並利用物件篩選模組40刪除尺寸特徵不符的興趣框的辨識方式,可降低本發明之物件影像辨識系統1及物件影像辨識方法計算量提升辨識率。此外,本發明之物件影像辨識系統1及物件影像辨識方法係用於辨識由移動中之影像擷取裝置100擷取之一影像110,只要移動中之影像擷取裝置擷取之一影像中的目標興趣框中的影像特性符合車牌的特徵,即可確認該目標興趣框為車牌,故本發明之物件影像辨識系統1及物件影像辨識方法可在單一影像110中辨識至少一或多個物件(車牌),提高了本發明之物件影像辨識系統及物件影像辨識方法的應用性。The object image recognition system 1 and the object image recognition method of the present invention accumulate M pixels horizontally adjacent to each pixel point 121 having the foreground value in the first binarized image 12 by a cumulative value calculation module. The foreground value corresponding to the point is used to form a foreground cumulative value of one of the pixel points 121, and the object filtering module 40 is used to delete the recognition method of the interest frame that does not match the size characteristics, which can reduce the object image recognition system 1 and the object image recognition method of the present invention. The amount of calculation improves the recognition rate. In addition, the object image recognition system 1 and the object image recognition method of the present invention are used to identify an image 110 captured by the moving image capturing device 100, as long as the The image characteristics of the target interest frame conform to the characteristics of the license plate, and it can be confirmed that the target interest frame is a license plate. Therefore, the object image recognition system 1 and the object image recognition method of the present invention can identify at least one or more objects in a single image 110 ( License plate), which improves the applicability of the object image recognition system and object image recognition method of the present invention.

應注意的是,上述諸多實施例僅係為了便於說明而舉例而已,本發明所主張之權利範圍自應以申請專利範圍所述為準,而非僅限於上述實施例。It should be noted that the above-mentioned many embodiments are merely examples for the convenience of description, and the scope of the rights claimed by the present invention should be based on the scope of the patent application, rather than being limited to the above-mentioned embodiments.

1‧‧‧物件影像辨識系統1‧‧‧ Object image recognition system

100‧‧‧影像擷取裝置 100‧‧‧Image capture device

110‧‧‧影像 110‧‧‧Image

10‧‧‧影像處理模組 10‧‧‧Image Processing Module

20‧‧‧累計值計算模組 20‧‧‧Cumulative value calculation module

30‧‧‧形態學處理模組 30‧‧‧ Morphology Processing Module

40‧‧‧物件篩選模組 40‧‧‧ Object Screening Module

50‧‧‧水平投影計算模組 50‧‧‧horizontal projection calculation module

12‧‧‧第一二值化影像 12‧‧‧ The first binary image

121‧‧‧像素點 121‧‧‧ pixels

圖1A係本發明之物件影像辨識系統之一實施例之硬體架構圖。 圖1B係本發明之計算模組於第一二值化影像累計特徵值之一實施例之示意圖。 圖2係本發明之物件影像辨識方法之一實施例之步驟流程圖。 圖3係本發明之物件影像辨識方法之另一實施例之步驟流程圖。FIG. 1A is a hardware architecture diagram of an embodiment of an object image recognition system according to the present invention. FIG. 1B is a schematic diagram of an embodiment of the cumulative eigenvalues of the calculation module of the present invention on the first binarized image. FIG. 2 is a flowchart of steps of an embodiment of an object image recognition method according to the present invention. FIG. 3 is a flowchart of steps in another embodiment of the object image recognition method of the present invention.

Claims (20)

一種物件影像辨識系統,其係與一影像擷取裝置電性連接,該物件影像辨識系統用於辨識由移動中之該影像擷取裝置擷取之一影像中至少一目標物件影像,其中該至少一目標物件影像包括一預定像素長度M,其中M為自然數,該物件影像辨識系統包括: 一影像處理模組,用以對該影像進行一影像處理以產生一第一二值化影像,其中該第一二值化影像之各像素點為一前景值或一背景值; 一累計值計算模組,於該第一二值化影像中,該累計值計算模組累計與每一具有該前景值之一像素點水平相鄰之M個像素點對應之該前景值而形成該像素點之一前景累計值; 一形態學處理模組,用以依據該些前景累計值對該第一二值化影像進行一形態學處理而產生一第二二值化影像,並從該第二二值化影像中標記至少一興趣框;以及 一物件篩選模組,由該至少一興趣框中找出該至少一目標物件影像。An object image recognition system is electrically connected to an image capture device. The object image recognition system is used to identify at least one target object image in an image captured by the image capture device in motion. A target object image includes a predetermined pixel length M, where M is a natural number. The object image recognition system includes: an image processing module for performing an image processing on the image to generate a first binary image, wherein Each pixel of the first binarized image is a foreground value or a background value; a cumulative value calculation module, in the first binarized image, the cumulative value calculation module accumulates with each having the foreground One of the pixels is horizontally adjacent to the foreground value corresponding to M pixels to form a cumulative value of the foreground of the pixel; a morphological processing module for the first two values according to the cumulative values of the foregrounds Performing a morphological process to generate a second binarized image, and marking at least one interest frame from the second binarized image; and an object filtering module from the at least one interest frame Find the at least one target object image. 如申請專利範圍第1項所述之物件影像辨識系統,其中於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之一右前景累計值,且該累計值計算模組累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之一左前景累計值,其中該前景累計值為該右前景累計值與該左前景累計值之總和。The object image recognition system according to item 1 of the scope of patent application, wherein in the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module accumulates the right side of the center to extend. Of One pixel corresponds to the foreground value to form a right foreground cumulative value of one of the pixels, and the cumulative value calculation module accumulates the left side of the center extending Each pixel corresponds to the foreground value to form a left foreground cumulative value of the pixel, wherein the foreground cumulative value is the sum of the right foreground cumulative value and the left foreground cumulative value. 如申請專利範圍第1項所述之物件影像辨識系統,其中於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之一右前景累計值R,且該累計值計算模組累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之一左前景累計值L,其中若,該累計值計算模組改累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之該前景累計值。The object image recognition system according to item 1 of the scope of patent application, wherein in the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module accumulates the right side of the center to extend. Of One pixel corresponds to the foreground value to form a right foreground cumulative value R of one of the pixels, and the cumulative value calculation module accumulates the left side of the center extending The left foreground cumulative value L of one of the pixels is formed by the corresponding foreground value of each pixel, where if , The accumulated value calculation module changes the accumulated left side of the center The foreground value corresponding to each pixel point forms the foreground cumulative value of the pixel point. 如申請專利範圍第3項所述之物件影像辨識系統,其中若,該累計值計算模組改累計該中心左側延伸至少個像素點對應之該前景值直到遇到連續兩個或以上的前景值為0的像素點而形成該像素點之該前景累計值。The object image recognition system described in item 3 of the scope of patent application, wherein if , The accumulated value calculation module changed to accumulate the left side of the center to extend at least Each pixel corresponds to the foreground value until two or more consecutive pixels with a foreground value of 0 are encountered to form the cumulative value of the foreground of the pixel. 如申請專利範圍第1項所述之物件影像辨識系統,其中於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之一右前景累計值R,且該累計值計算模組累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之一左前景累計值L,其中若,該累計值計算模組改累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之該前景累計值。The object image recognition system according to item 1 of the scope of patent application, wherein in the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module accumulates the right side of the center to extend. Of One pixel corresponds to the foreground value to form a right foreground cumulative value R of one of the pixels, and the cumulative value calculation module accumulates the left side of the center extending The left foreground cumulative value L of one of the pixels is formed by the corresponding foreground value of each pixel, where if , The accumulated value calculation module changed to accumulate the The foreground value corresponding to each pixel point forms the foreground cumulative value of the pixel point. 如申請專利範圍第5項所述之物件影像辨識系統,其中若,該累計值計算模組改累計該中心右側延伸至少個像素點對應之該前景值直到遇到連續兩個或以上的前景值為0的像素點而形成該像素點之該前景累計值。The object image recognition system described in item 5 of the scope of patent application, wherein if The accumulated value calculation module is changed to accumulate the center to the right and extend at least Each pixel corresponds to the foreground value until two or more consecutive pixels with a foreground value of 0 are encountered to form the cumulative value of the foreground of the pixel. 如申請專利範圍第1項所述之物件影像辨識系統,其中於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組以該中心右側延伸至少個像素點直至遇到連續兩個像素點或兩個以上的像素點的前景值為0,累計對應之該些前景值而形成該像素點之一右前景累計值,且該累計值計算模組累計以該中心左側延伸至少個像素點直至遇到連續兩個像素點或兩個以上的像素點的前景值為0,累計對應之該前景值而形成該像素點之一左前景累計值,其中該前景累計值為該右前景累計值與該左前景累計值之總和。The object image recognition system according to item 1 of the scope of patent application, wherein in the first binarized image, the pixel point having the foreground value is used as a center, and the cumulative value calculation module is extended to the right of the center. at least For each pixel point, the foreground value of two consecutive pixels or more is met, and the corresponding foreground values are accumulated to form the right foreground cumulative value of one of the pixels, and the accumulated value calculation module Cumulatively extend at least to the left of the center For each pixel point, the foreground value of two consecutive pixels or more is 0, and the corresponding foreground value is accumulated to form the left foreground cumulative value of one of the pixels, where the foreground cumulative value is the right The sum of the cumulative foreground value and the cumulative left foreground value. 如申請專利範圍第1項至第7項任一項所述之物件影像辨識系統,其中該至少一目標物件影像包括一預定寬長比例,該物件篩選模組依據該預定寬長比例由該至少一興趣框中找出符合該預定寬長比例之至少一目標興趣框。According to the object image recognition system described in any one of claims 1 to 7, wherein the at least one target object image includes a predetermined width-to-length ratio, and the object screening module is configured by the at least one An interest box finds at least one target interest box that matches the predetermined width-to-length ratio. 如申請專利範圍第8項所述之物件影像辨識系統,更包括一水平投影計算模組,用以依序計算該至少一目標興趣框的一水平投影累計值,以供該物件篩選模組由該至少一目標興趣框中找出該水平投影累計值高於K之該目標物件影像,其中K為自然數。The object image recognition system described in item 8 of the scope of patent application, further includes a horizontal projection calculation module for sequentially calculating a cumulative horizontal projection value of the at least one target interest frame for the object screening module to The at least one target interest box finds the target object image whose cumulative horizontal projection value is higher than K, where K is a natural number. 如申請專利範圍第1項所述之物件影像辨識系統,其中該至少一目標物件影像為一車牌影像。The object image recognition system described in item 1 of the scope of patent application, wherein the at least one target object image is a license plate image. 一種物件影像辨識方法,用於辨識由移動中之一影像擷取裝置擷取之一影像中至少一目標物件影像,其中該至少一目標物件影像包括一預定像素長度M,其中M為自然數,該物件影像辨識方法包括下列步驟: 藉由一影像處理模組對該影像進行一影像處理以產生一第一二值化影像,其中該第一二值化影像之各像素點為一前景值或一背景值; 藉由一累計值計算模組於該第一二值化影像中,該累計值計算模組累計與每一具有該前景值之一像素點水平相鄰之M個像素點對應之該前景值而形成該像素點之一前景累計值; 藉由一形態學處理模組,依據該些前景累計值對該第一二值化影像進行一形態學處理而產生一第二二值化影像,並從該第二二值化影像中標記至少一興趣框;以及 藉由一物件篩選模組,由該至少一興趣框中找出該至少一目標物件影像。An object image recognition method for identifying at least one target object image in an image captured by an image capturing device in motion, wherein the at least one target object image includes a predetermined pixel length M, where M is a natural number, The object image recognition method includes the following steps: An image processing module performs an image processing on the image to generate a first binary image, wherein each pixel point of the first binary image is a foreground value or A background value; in the first binarized image by an accumulated value calculation module, the accumulated value calculation module accumulates corresponding to each of the M pixels that are horizontally adjacent to each pixel having the foreground value The foreground value to form a foreground cumulative value of the pixel; by a morphological processing module, a morphological process is performed on the first binarized image according to the foreground cumulative values to generate a second binarization Image, and at least one interest frame is marked from the second binarized image; and an object filtering module is used to find the at least one target object image from the at least one interest frame. 如申請專利範圍第12項所述之物件影像辨識方法,更包括下列步驟: 於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之一右前景累計值,且該累計值計算模組累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之一左前景累計值,其中該前景累計值為該右前景累計值與該左前景累計值之總和。The object image recognition method according to item 12 of the scope of patent application, further comprising the following steps: In the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module accumulates The center extends to the right One pixel corresponds to the foreground value to form a right foreground cumulative value of one of the pixels, and the cumulative value calculation module accumulates the left side of the center extending Each pixel corresponds to the foreground value to form a left foreground cumulative value of the pixel, wherein the foreground cumulative value is the sum of the right foreground cumulative value and the left foreground cumulative value. 如申請專利範圍第11項所述之物件影像辨識方法,更包括下列步驟: 於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之一右前景累計值R,且該累計值計算模組累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之一左前景累計值L,其中若,該累計值計算模組改累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之該前景累計值。The object image recognition method described in item 11 of the scope of patent application, further includes the following steps: In the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module accumulates The center extends to the right One pixel corresponds to the foreground value to form a right foreground cumulative value R of one of the pixels, and the cumulative value calculation module accumulates the left side of the center extending The left foreground cumulative value L of one of the pixels is formed by the corresponding foreground value of each pixel, where if , The accumulated value calculation module changes the accumulated left side of the center The foreground value corresponding to each pixel point forms the foreground cumulative value of the pixel point. 如申請專利範圍第13項所述之物件影像辨識方法,更包括下列步驟: 若,該累計值計算模組改累計該中心左側延伸至少個像素點對應之該前景值直到遇到連續兩個或以上的前景值為0的像素點而形成該像素點之該前景累計值。The object image recognition method described in item 13 of the scope of patent application, further includes the following steps: , The accumulated value calculation module changed to accumulate the left side of the center to extend at least Each pixel corresponds to the foreground value until two or more consecutive pixels with a foreground value of 0 are encountered to form the cumulative value of the foreground of the pixel. 如申請專利範圍第11項所述之物件影像辨識方法,更包括下列步驟: 於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之一右前景累計值R,且該累計值計算模組累計該中心左側延伸之個像素點對應之該前景值而形成該像素點之一左前景累計值L,其中若,該累計值計算模組改累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之該前景累計值。The object image recognition method described in item 11 of the scope of patent application, further includes the following steps: In the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module accumulates The center extends to the right One pixel corresponds to the foreground value to form a right foreground cumulative value R of one of the pixels, and the cumulative value calculation module accumulates the left side of the center extending The left foreground cumulative value L of one of the pixels is formed by the corresponding foreground value of each pixel, where if , The accumulated value calculation module changed to accumulate the The foreground value corresponding to each pixel point forms the foreground cumulative value of the pixel point. 如申請專利範圍第15項所述之物件影像辨識方法,更包括下列步驟: 若,該累計值計算模組改累計該中心右側延伸之個像素點對應之該前景值而形成該像素點之該前景累計值。The object image recognition method described in item 15 of the patent application scope further includes the following steps: , The accumulated value calculation module changed to accumulate the The foreground value corresponding to each pixel point forms the foreground cumulative value of the pixel point. 如申請專利範圍第11項所述之物件影像辨識方法,更包括下列步驟:其中於該第一二值化影像中,以具有該前景值之該像素點為一中心,該累計值計算模組以該中心右側延伸至少個像素點直至遇到連續兩個像素點或兩個以上的像素點的前景值為0,累計對應之該些前景值而形成該像素點之一右前景累計值,且該累計值計算模組累計以該中心左側延伸至少個像素點直至遇到連續兩個像素點或兩個以上的像素點的前景值為0,累計對應之該前景值而形成該像素點之一左前景累計值,其中該前景累計值為該右前景累計值與該左前景累計值之總和。The object image recognition method according to item 11 of the scope of patent application, further comprising the following steps: in the first binarized image, the pixel point having the foreground value is used as a center, and the accumulated value calculation module Extend at least to the right of the center For each pixel point, the foreground value of two consecutive pixels or more is met, and the corresponding foreground values are accumulated to form the right foreground cumulative value of one of the pixels, and the accumulated value calculation module Cumulatively extend at least to the left of the center For each pixel point, the foreground value of two consecutive pixels or more is 0, and the corresponding foreground value is accumulated to form the left foreground cumulative value of one of the pixels, where the foreground cumulative value is the right The sum of the cumulative foreground value and the cumulative left foreground value. 如申請專利範圍第11項至第17項任一項所述之物件影像辨識方法,其中,其中該至少一目標物件影像包括一預定寬長比例,該物件影像辨識方法更包括下列步驟: 藉由該物件篩選模組依據該預定寬長比例由該至少一興趣框中找出符合該預定寬長比例之至少一目標興趣框。According to the object image recognition method according to any one of claims 11 to 17, wherein the at least one target object image includes a predetermined width-to-length ratio, the object image recognition method further includes the following steps: The object screening module finds at least one target interest frame that matches the predetermined width-to-length ratio from the at least one interest frame according to the predetermined width-to-length ratio. 如申請專利範圍第18項所述之物件影像辨識方法,更包括下列步驟: 依序計算該至少一目標興趣框的一水平投影累計值,以供該物件篩選模組由該至少一目標興趣框中找出該水平投影累計值高於K之該目標物件影像,其中K為大於2的自然數。The object image recognition method described in item 18 of the scope of patent application, further includes the following steps: Calculate a horizontal projection cumulative value of the at least one target interest frame in order for the object screening module to pass the at least one target interest frame Find the target object image whose horizontal projection cumulative value is higher than K, where K is a natural number greater than 2. 如申請專利範圍第11項所述之物件影像辨識方法,其中該至少一目標物件影像為一車牌影像。The object image recognition method according to item 11 of the scope of patent application, wherein the at least one target object image is a license plate image.
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