WO2019008766A1 - 証憑処理システムおよび証憑処理プログラム - Google Patents
証憑処理システムおよび証憑処理プログラム Download PDFInfo
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- WO2019008766A1 WO2019008766A1 PCT/JP2017/025019 JP2017025019W WO2019008766A1 WO 2019008766 A1 WO2019008766 A1 WO 2019008766A1 JP 2017025019 W JP2017025019 W JP 2017025019W WO 2019008766 A1 WO2019008766 A1 WO 2019008766A1
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q40/00—Finance; Insurance; Tax strategies; Processing of corporate or income taxes
Definitions
- the present invention relates to a voucher processing system and a voucher processing program for analyzing a voucher image obtained by imaging a voucher.
- one or more items are determined from the written contents (accounting information) of the slip read by the OCR device, and the items stored in the history database (items processed as correct journal entries in the past) and the present After the rate of matching (similarity) with the item to be processed is determined, the journaling patterns are listed in a selectable manner in order from the one with the highest rate of matching.
- the present invention has been made in view of such circumstances, and an object thereof is to improve the analysis accuracy of a voucher image.
- a first invention provides a voucher processing system having an issuer identification unit, a layout database, a layout identification unit, and a voucher processing unit.
- the issuer identification unit identifies the issuer of the voucher based on the information in the voucher image obtained by imaging the voucher to be processed.
- the layout database stores a layout that defines the attributes and positions of the items described in the voucher, in association with the issuer of the voucher.
- the layout specifying unit searches the layout database using the issuer specified by the issuer specifying unit as a key, and specifies a layout corresponding to the issuer.
- the voucher processing unit analyzes the information in the voucher image based on the layout specified by the layout specifying unit.
- the issuer specifying unit extracts, from the character string recognized from the voucher image, one corresponding to the issuer character string registered as the character string indicating the issuer,
- the issuer may be identified.
- the issuer string may be the issuer's name, address or telephone number.
- the issuer identifying unit characterizes a voucher image based on a knowledge base in which a correspondence between the feature amount characterizing the sample image of the voucher and the issuer of the voucher is stored. From this, the issuer may be identified.
- the layout specifying unit searches the layout database, and as a result, when there are a plurality of layouts corresponding to the issuer specified by the issuer specifying unit, each of the plurality of layouts with the voucher image Preferably, one of the layouts is selected by evaluating the degree of similarity.
- a second invention provides a voucher processing program.
- This program causes a computer to execute processing having the following three steps.
- the issuer of the voucher is specified based on the information in the voucher image obtained by imaging the voucher to be processed.
- a layout database is stored in which the layout defining the attribute and the position of the item described in the voucher is stored in association with the issuer of the voucher using the issuer as a key, and the issuer corresponds to the issuer. Identify the layout
- information in the voucher image is analyzed based on the layout.
- the first step is performed by extracting, from the character string recognized from the voucher image, one corresponding to the issuer character string registered as the character string indicating the issuer.
- a step of identifying an issuer may be included.
- the issuer string may be the issuer's name, address or telephone number.
- the first step is characterized by characterizing the voucher image on the basis of a knowledge base in which the correspondence between the feature amount characterizing the sample image of the voucher and the issuer of the voucher is stored. From the step of identifying the issuer.
- each of the plurality of layouts is evaluated by evaluating the similarity to the voucher image. It is preferable to select one of the layouts.
- the issuer of the voucher is identified from the information in the voucher image, and the layout of the voucher is identified by searching the layout database using the issuer as a key.
- the information on the issuer described in the voucher image is highly unique as compared to the information on other attributes.
- the evidence of a particular issuer is stylized to a certain extent, and its pattern is finite. Therefore, if the layout of the voucher is classified for each issuer and made into a database, and the layout is specified based on the issuer, it is possible to appropriately determine what information is written in which part of the voucher image. . Thereby, the analysis accuracy of the voucher image can be improved.
- FIG. 1 is an overall view of a voucher processing network system according to the present embodiment.
- the voucher processing network system 1 has a server client type network configuration mainly composed of a large number of clients 2 operated by a user who requests voucher processing and a voucher processing server 3 for processing vouchers.
- the voucher processing server 3 receives the processing request from the client 2, it automatically performs processing of the voucher according to the request, stores the data generated by this processing in the storage device provided by itself, and Send the processing result to client 2.
- the client 2 transmits a voucher processed image obtained by imaging the voucher to be processed to the voucher processing server 3 when requesting for the voucher processing.
- the voucher is read by a smartphone, a scanner, a multi-function device, a camera, etc., and the form of transmitting the imaged voucher image directly to the address designated beforehand is sent by e-mail, chat, online storage, etc.
- the voucher image is sufficient for the information to be transmitted at the time of the request, and the information necessary for the voucher processing is automatically extracted by analyzing the voucher image. Therefore, the user does not need to input information necessary for the voucher processing, for example, information such as the date of receipt, the amount, the issuer, etc. each time with the keyboard etc. (Of course, as a specification of the system, May be acceptable).
- certificate refers to a document indicating the contents of a transaction, and specifically, an order, a contract, an invoice, a quote, a bill, a receipt, a check, various statements, payment Certificate, passbook (normal deposit passbook, checking account, general account passbook etc), usage statement (credit card, prepaid card, electronic money etc), various slips (sales slip, purchase slip, cash account book etc) And so on.
- FIG. 2 is a block diagram of the voucher processing server 3.
- the voucher processing server 3 targets the voucher image received from the client 2, analyzes the voucher image, and performs predetermined processing, typically, journalizing (that is, the transaction on the bookkeeping is divided into debits and credits, respectively). Determine the appropriate account items, and process it separately).
- the voucher processing server 3 has a character recognition unit 4, a feature amount extraction unit 5, an issuer identification unit 6, a layout identification unit 7, a layout database 8, and a voucher processing unit 9.
- the feature of this embodiment is that the issuer of the voucher is specified from the information in the voucher image, the layout of the voucher is specified based on the issuer, and the information in the voucher image is analyzed.
- the character recognition unit 4 uses known optical character recognition (OCR) to identify characters included in the voucher image to be processed. Characters to be identified may be either printed characters or handwritten characters. In addition, in the case of multi-lingual support, the language is specified from the character representation characteristics and the like.
- the feature amount extraction unit 5 calculates a feature amount (feature vector) that characterizes the voucher image to be processed.
- the evidence image is very large data, and it is not necessarily appropriate as a measure to determine the similarity of what is drawn there. Therefore, in order to capture features of the voucher image, specifically, scale, color, aspect ratio, edge, etc., a reduced-dimensional feature quantity consisting of a finite number of elements is extracted from the voucher image.
- the issuer identification unit 6 identifies the issuer of the voucher based on the information in the voucher image.
- the knowledge base 10 with which the issuer identification part 6 is equipped is used.
- the knowledge base 10 is configured by various databases, rules, learning devices, etc., and information (knowledge) necessary to specify an issuer is registered in advance.
- an issuer character string database, a feature database, and a rule base are used as the knowledge base 10.
- FIG. 3 is an explanatory diagram of a publisher character string database.
- issuer database 10a a unique character string (that is, an issuer character string) indicating a specific issuer is registered in advance.
- the issuer character string is, for example, associated with a specific issuer, such as a character string "stock company ⁇ " as "issuer A".
- issuer string typically, the name (company name) of the issuer, the address, or the telephone number can be used, but it is also possible to use a fax number or a standardized company code, etc. Good.
- the issuer identification unit 6 issues, among the character strings recognized by the character recognition unit 4, one corresponding to the character string registered in advance in the rule base, specifically, one completely or partially matching, etc.
- a rule-based character string may be defined using a regular expression, such as “ ⁇ ⁇ ⁇ .. +” (where “.” Is any one character except a line feed, and “+” is immediately before Each one or more repetitions of the pattern of. Then, the issuer identification unit 6 identifies the issuer corresponding to the issuer character string by referring to the issuer character string database 10a.
- FIG. 4 is an explanatory diagram of the feature database 10 b.
- the feature amount database 10b the correspondence between the feature amount characterizing the sample image of the voucher and the issuer of the voucher is registered and stored in advance.
- feature amount FV1 is issuer A
- feature amount FV2 is issuer B
- feature amount FV3 is issuer C
- the calculation of the feature amount may be performed on the entire sample image of the voucher, or may be performed on a part of the image like the logo of the issuer.
- the feature amount and the issuer do not necessarily have to be one to one, and may have an N to 1 relationship to cope with a case where there are a plurality of voucher patterns issued by a certain issuer.
- the issuer identifying unit 6 identifies the issuer corresponding to the feature amount by searching the feature amount database 10 b using the feature amount extracted by the feature amount extracting unit 5 as a key. Specifically, the degree of similarity (likelihood) between the feature amount of the voucher image to be processed and the feature amount registered in the feature amount database 10 b is evaluated and calculated.
- the high degree of similarity between the two means that the feature point indicated by the feature amount (feature vector) to be processed is close to the feature point indicated by the feature amount (feature vector) registered in the feature database 10b in the feature space. It means that. Therefore, the similarity between the two feature points can be evaluated by calculating the distance between the two feature points using a known method such as Euclidean distance or absolute sum of coordinate component differences. Then, among the many feature amounts registered in the feature database 10b, the one with the highest similarity is selected, and the corresponding one is identified as the issuer.
- the knowledge base 10 for storing the correspondence between the feature quantity characterizing the sample image of the voucher and the issuer of the voucher is not limited to the feature quantity database 10b, and may be implemented as a learning device.
- FIG. 5 is an explanatory diagram of a learning device.
- the input X is a feature amount of the voucher image extracted by the feature amount extraction unit 5 and is composed of m-dimensional elements.
- the output Y is composed of n-dimensional elements, and this bit string uniquely identifies the issuer.
- ⁇ is an internal parameter of this function.
- a learning device 10c for example, “supervised learning” which is a classification of machine learning, more specifically, a neural network, a support vector machine, or the like can be used.
- supervised learning which is a classification of machine learning, more specifically, a neural network, a support vector machine, or the like
- a pair of a feature amount and an issuer is used as “teacher data”.
- the success or failure of the issuer output with respect to the input of the feature amount is fed back to the learning device 10 c as a “teacher vector”.
- the learning device 10 c updates the value of the internal parameter ⁇ (for example, the connection weight of the neural network) so that the correct issuer is output. Learning (adjustment) of the internal parameter ⁇ is performed by repeating such processing for each sample.
- the feature amount of the evidence image to be processed is input to the learning device 10c as "test data”
- this feature amount is supported Can be output.
- the issuer specifying unit 6 comprehensively evaluates the result obtained on the character string basis and the result obtained on the feature amount basis, and outputs the best issuer to the layout specifying unit 7. Specifically, in the first case, when the issuer matches on both the string basis and the feature amount basis, this issuer is output. In the second case, when a plurality of issuers are specified on a character string basis, among them, the one with the highest evaluation on a feature value basis is output as the issuer.
- an issuer such as convenience store name (receipt), corporation name (payment source), storage agent name, tax signature, etc. There may be multiple candidates for. In such a case, it is possible to appropriately identify that the convenience store is the issuer by registering in advance in the rule base which one should be adopted as the issuer. And it is specified based on the layout mentioned later that a tax office is a payee.
- the layout specifying unit 7 searches the layout database 8 using the issuer specified by the issuer specifying unit 6 as a key, and specifies a layout corresponding to the issuer.
- FIG. 6 is an explanatory diagram of the layout database 8.
- the "attributes" for example, date, payee, amount, etc.
- the layout database 8 is constructed, a large number of samples of vouchers are collected, patterns of layout for each issuer are classified, and then each pattern is sequentially registered.
- Items to be defined in the layout are determined according to the processing contents of the voucher. For example, in the case of a receipt or a receipt, the date, the amount, the payee, etc., in the passbook, the date, the abstract, the trading partner, the amount, etc., in the credit card statement, the date, the abstract, the counterpart, the payment amount, etc.
- the “position” of each item its coordinates and range may be fixed, but may be set variably according to each individual voucher image.
- the “position” of the amount column required to process vouchers should be variable depending on the size (aspect ratio) of the receipt, the number of rows of the purchased item, etc.
- the layout is defined in
- calculation rules are defined as "attributes" of the amount, it is possible to cope with cases where recalculation is necessary for the amount described in the voucher.
- the layout specifying unit 7 evaluates the similarity (certainty) with the voucher image for each layout, and the similarity is the most Choose the high one.
- the feature amounts of the respective layouts are registered in advance, and the similarity to the voucher image is evaluated on the basis of the feature amounts described above.
- one of the layouts is identified and output to the voucher processing unit 9.
- the voucher processing unit 9 receives the layout identified by the layout identification unit 7 and the voucher image to be processed.
- the voucher processing unit 9 analyzes the information in the voucher image using this layout as a template. Specifically, first, the size of the voucher image is normalized so as to match the size of the layout. Next, the layout is applied to the voucher image, the character string of the area designated by the layout is recognized by the OCR, and an attribute designated by the layout is given to each of the recognized character strings.
- the language may be specified from the character writing characteristics or the like, or "language" may be defined as supplementary information of the layout in the layout database 8. If the characters on the voucher image are read in the language according to the issuer, the processing of vouchers can be performed centrally without depending on the language.
- FIG. 7 is an explanatory diagram of a receipt (receipt) type layout as an example.
- the issuer A is identified from the logo mark written on the receipt, the name of the store, and the telephone number.
- the layout of this issuer A is specified, and this layout is applied to the image.
- "May 20, 2015” as the date attribute and "396" as the amount attribute are extracted and digitized for the receipt of the issuer A, respectively.
- the layout defines the position of the date to be extracted, so it is uniquely identified which date should be used. Ru. Also, as another example, even if it is necessary to recalculate the amount written on the receipt, if the formula for calculating the total amount to be finally used is defined as the additional rule of the layout, the recalculation will be performed. Can also respond flexibly.
- the voucher processing unit 9 performs predetermined processing based on the plurality of items extracted by the above-described analysis.
- this process is typically assumed to be a journal entry, it is not limited to this, and may be, for example, a process of managing the balance of the passbook.
- the processing result is presented to the user. Specifically, the user is notified of the completion of the processing of the voucher according to the request by e-mail or the like, and the user downloads and confirms the processing result. Also, the processing result may be notified by e-mail or API. The user can modify the data generated by the voucher process as needed.
- any layout is as follows. Is identified.
- FIG. 8 is a flowchart showing the procedure of the first layout identification method.
- the issuer identification unit 6 identifies the issuer of the voucher based on the information in the voucher image as described above.
- the issuer A is specified, and it is assumed that there are N layout patterns of vouchers related to the issuer A.
- step 2 the issuer specifying unit 6 calculates and evaluates the similarity between the feature amount of the voucher image to be processed and the feature amounts of N layout patterns related to the issuer A.
- the layout database 8 stores a layout in association with a unique issuer name accompanied by specification of a layout pattern. That is, the issuer name (with layout pattern designation) and the layout in the database 8 are associated with one to one.
- the layout "A-1" corresponding to the issuer name "A-1" is specified (step 6).
- the layout is uniquely identified by searching the layout database 8 after narrowing down not only to the issuer A but also to the pattern of the layout.
- FIG. 9 is a flowchart showing the procedure of the second layout identification method.
- the issuer identification unit 6 identifies the issuer A of the voucher based on the information in the voucher image.
- "A" is output as the issuer name (step 12).
- this issuer name does not accompany the specification of the layout pattern.
- step 14 the layout specifying unit 7 sets the feature amount of the voucher image to be processed and the N layouts related to the issuer A (“A-1”, “A-2”,. Calculate and evaluate the degree of similarity with the feature amount of “)” respectively.
- the feature quantities of the N layout patterns are stored in the layout database 8 in association with the respective layouts. Then, for example, the layout "A-1" is specified as the layout having the highest degree of similarity (step 15).
- N layouts relating to the issuer A are extracted and identified by searching the layout database 8 with the issuer A as a key. Then, the layout is uniquely identified by evaluating the N layouts on a feature value basis.
- the information required at the time of the request may basically be the voucher image. Therefore, the time and effort of the user regarding the processing of vouchers can be saved, and the convenience for the user can be enhanced.
- the issuer of the voucher is specified from the information in the voucher image, and the layout of the voucher is specified by searching the layout database 8 using the issuer as a key.
- the information on the issuer described in the voucher image is highly unique as compared with the information on other attributes such as the amount and the date.
- the evidence of a particular issuer is stylized to a certain extent, and its pattern is finite. Therefore, if the layout of the voucher is classified for each issuer and made into a database, and the layout is specified based on the issuer, it is possible to appropriately determine what information is written in which part of the voucher image. . Thereby, the analysis accuracy of the voucher image can be improved.
- the issuer can be identified with high accuracy by specifying the issuer of the voucher using both the character string and the feature value.
- the present invention is not limited to this, and the issuer may be specified by only the character string.
- the method of specifying the issuer and specifying the layout has been described, but the method may be used together with the method of specifying the layout without specifying the issuer.
- the layout associated with the specific receipt is applied without specifying the issuer. It looks like
- the voucher processing server 3 has been mainly described, but the present invention can also be realized as a computer program that causes a computer to operate as the voucher processing server 3.
- this computer program determines the issuer of this voucher based on the information in the voucher image, searches the layout database 8, and The computer is made to execute processing including a step of specifying a layout corresponding to an issuer, and a step of analyzing information in a voucher image based on the layout, and performing a voucher processing.
- the details of each step are as described above.
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Abstract
Description
2 クライアント
3 証憑処理サーバ
4 文字認識部
5 特徴量抽出部
6 発行者特定部
7 レイアウト特定部
8 レイアウトデータベース
9 証憑処理部
10 知識ベース
10a 発行者文字列データベース
10b 特徴量データベース
10c 学習器
Claims (10)
- 証憑処理システムにおいて、
処理対象となる証憑を画像化した証憑画像中の情報に基づいて、当該証憑の発行者を特定する発行者特定部と、
証憑に記載された項目の属性および位置を規定するレイアウトを、証憑の発行者に対応付けて記憶するレイアウトデータベースと、
前記発行者特定部によって特定された発行者をキーに前記レイアウトデータベースを検索して、当該発行者に対応したレイアウトを特定するレイアウト特定部と、
前記レイアウト特定部によって特定されたレイアウトに基づいて、前記証憑画像中の情報を解析する証憑処理部と
を有することを特徴とする証憑処理システム。 - 前記発行者特定部は、前記証憑画像より認識された文字列から、発行者を示す文字列として登録された発行者文字列に相当するものを抽出することによって、前記発行者を特定することを特徴とする請求項1に記載された証憑処理システム。
- 前記発行者文字列は、発行者の名称、住所または電話番号であることを特徴とする請求項2に記載された証憑処理システム。
- 前記発行者特定部は、証憑のサンプル画像を特徴化した特徴量と、証憑の発行者との対応関係を記憶した知識ベースに基づいて、前記証憑画像を特徴化した特徴量から、前記発行者を特定することを特徴とする請求項1または2に記載された証憑処理システム。
- 前記レイアウト特定部は、前記レイアウトデータベースを検索した結果、前記発行者特定部によって特定された前記発行者に対応したレイアウトが複数存在する場合、当該複数のレイアウトのそれぞれについて、前記証憑画像との類似度を評価することによって、いずれかのレイアウトを選択することを特徴とする請求項1に記載された証憑処理システム。
- 証憑処理プログラムにおいて、
処理対象となる証憑を画像化した証憑画像中の情報に基づいて、当該証憑の発行者を特定する第1のステップと、
前記発行者をキーに、証憑に記載された項目の属性および位置を規定するレイアウトを証憑の発行者に対応付けて記憶するレイアウトデータベースを検索して、当該発行者に対応したレイアウトを特定する第2のステップと、
前記レイアウトに基づいて、前記証憑画像中の情報を解析する第3のステップと
を有する処理をコンピュータに実行させることを特徴とする証憑処理プログラム。 - 前記第1のステップは、前記証憑画像より認識された文字列から、発行者を示す文字列として登録された発行者文字列に相当するものを抽出することによって、前記発行者を特定するステップを含むことを特徴とする請求項6に記載された証憑処理プログラム。
- 前記発行者文字列は、発行者の名称、住所または電話番号であることを特徴とする請求項7に記載された証憑処理プログラム。
- 前記第1のステップは、証憑のサンプル画像を特徴化した特徴量と、証憑の発行者との対応関係を記憶した知識ベースに基づいて、前記証憑画像を特徴化した特徴量から、前記発行者を特定するステップを含むことを特徴とする請求項6または7に記載された証憑処理プログラム。
- 前記第2のステップは、前記レイアウトデータベースを検索した結果、前記発行者に対応したレイアウトが複数存在する場合、当該複数のレイアウトのそれぞれについて、前記証憑画像との類似度を評価することによって、いずれかのレイアウトを選択することを特徴とする請求項6に記載された証憑処理プログラム。
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JP2021072088A (ja) * | 2020-04-30 | 2021-05-06 | 株式会社日本デジタル研究所 | 会計処理装置、会計処理プログラム、会計処理システム及び会計処理方法 |
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