CN114611400B - Early warning information screening method and system - Google Patents
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Abstract
The invention discloses a method and a system for screening early warning information, and relates to the field of security protection. The invention comprises the following steps: acquiring a historical warning condition, and labeling the historical warning condition, wherein the labels are 0 and 1; constructing a CNN neural network, and training the CNN neural network by using the history warning condition with the label; performing repeated cyclic training to obtain a CNN neural network model; acquiring a real-time detection alarm condition, and inputting the real-time detection alarm condition into a CNN neural network model; if the screening result of the CNN neural network model is 1, triggering an alarm; and if the screening result of the CNN neural network model is 0, false early warning information is obtained. The invention improves the accuracy of alarming, avoids wasting a great deal of manpower, material resources and time caused by processing security personnel according to false alarm conditions, and improves the stability and accuracy of a security system.
Description
Technical Field
The invention relates to the field of security protection, in particular to a method and a system for screening early warning information.
Background
Along with the continuous progress of scientific information technology, digitization, networking and intellectualization are rapidly developed, and the application of new generation artificial intelligence technology rapidly rises worldwide, so that the mode of economic and social development is fundamentally changed, the production and living modes of people are changed, and the competition pattern of enterprises in society is changed. In recent years, the application of artificial intelligence in security industry is gradually complete and mature, the overall improvement of the technology and efficiency of the security industry is promoted, and the security and happiness of people are brought to people, so that the artificial intelligence is also widely paid attention to people.
The safety precaution means that the safety precaution to personnel, equipment, buildings or areas is comprehensively realized in the building or building group (including surrounding areas) or in specific places and areas by adopting modes of manpower precaution, technical precaution, physical precaution and the like. However, the existing security system has a false alarm phenomenon, which consumes a lot of manpower and material resources, so how to reduce the false alarm phenomenon is needed to be solved by those skilled in the art.
Disclosure of Invention
In view of the above, the present invention provides a method and a system for screening early warning information to solve the above problems.
In order to achieve the above purpose, the present invention adopts the following technical scheme:
a method for screening early warning information comprises the following steps:
acquiring a historical warning condition, and labeling the historical warning condition, wherein the labels are 0 and 1;
constructing a CNN neural network, and training the CNN neural network by using the history warning condition with the label;
performing repeated cyclic training to obtain a CNN neural network model;
acquiring a real-time detection alarm condition, and inputting the real-time detection alarm condition into a CNN neural network model;
if the screening result of the CNN neural network model is 1, triggering an alarm;
and if the screening result of the CNN neural network model is 0, false early warning information is obtained.
Optionally, the step of labeling the historical alert is as follows:
extracting characteristic points of the historical police conditions, and detecting the characteristic points;
removing abnormal characteristic points;
constructing a scale model according to the reserved characteristic points;
determining feature vectors of the feature points on the basis of the scale model;
determining the direction of the feature points according to the feature vectors;
and determining the tags of the historical police conditions according to the directions of the feature points.
Optionally, the method further comprises dimension reduction of a clustering method of the feature vector of the feature point based on the item distribution approximation of the information entropy.
Optionally, the specific method for acquiring the real-time warning condition is as follows:
acquiring voice information and image information of a real-time alarm condition;
preprocessing voice information and image information;
and classifying the preprocessed voice information and the preprocessed image information according to a preset safety threshold value to obtain accurate voice information and accurate image information.
The technical scheme has the following beneficial effects:
by preprocessing the real-time warning condition, the filtering precision of the early warning information is improved, and the calculated amount of the neural network is reduced.
Optionally, the specific process of preprocessing the voice information is as follows:
whether the decibel number of the voice information is smaller than a preset threshold value or not;
if not, eliminating noise by using a Gaussian algorithm;
if yes, signal amplification is carried out on the voice information, and noise is removed by means of Gaussian algorithm.
Optionally, preprocessing the image information includes: and cutting the edge of the image to remove the redundant noise point image.
An early warning information screening system, comprising:
historical alert labeling module: the method comprises the steps of obtaining a historical warning condition, and labeling the historical warning condition, wherein the labels are 0 and 1;
the neural network training module: the method is used for constructing a CNN neural network, and training the CNN neural network by utilizing the history warning condition with the label;
the neural network model building module: the method is used for repeated cyclic training to obtain a CNN neural network model;
the real-time warning condition acquisition module is used for: the method comprises the steps of acquiring a real-time detection alarm condition, and inputting the real-time detection alarm condition into a CNN neural network model;
the early warning information screening module: the method is used for screening the early warning information: if the screening result of the CNN neural network model is 1, triggering an alarm; and if the screening result of the CNN neural network model is 0, false early warning information is obtained.
Optionally, the real-time warning condition acquisition module acquires the real-time warning condition through a camera and an infrared information sensing device.
Compared with the prior art, the invention discloses and provides the early warning information screening method and system, which have the following beneficial effects:
by combining the historical alarm conditions and utilizing a neural network model, the weight of the authenticity of the alarm condition information is calculated, whether the alarm condition is the true alarm condition is judged, and the accuracy of triggering the alarm by the alarm condition is remarkably improved. Furthermore, the invention improves the calculation speed of the neural network by preprocessing the real-time alarm condition and lays a foundation for filtering false alarm conditions. The invention improves the accuracy of alarming, avoids wasting a great deal of manpower, material resources and time caused by processing security personnel according to false alarm conditions, and improves the stability and accuracy of a security system.
Drawings
In order to more clearly illustrate the embodiments of the present invention or the technical solutions in the prior art, the drawings that are required to be used in the embodiments or the description of the prior art will be briefly described below, and it is obvious that the drawings in the following description are only embodiments of the present invention, and that other drawings can be obtained according to the provided drawings without inventive effort for a person skilled in the art.
FIG. 1 is a schematic flow chart of the present invention;
fig. 2 is a schematic structural view of the present invention.
Detailed Description
The following description of the embodiments of the present invention will be made clearly and completely with reference to the accompanying drawings, in which it is apparent that the embodiments described are only some embodiments of the present invention, but not all embodiments. All other embodiments, which can be made by those skilled in the art based on the embodiments of the invention without making any inventive effort, are intended to be within the scope of the invention.
The embodiment of the invention discloses a method for screening early warning information, which is shown in fig. 1 and comprises the following steps:
acquiring a historical warning condition, and labeling the historical warning condition with the labels of 0 and 1;
constructing a CNN neural network, and training the CNN neural network by using the history warning condition with the label;
performing repeated cyclic training to obtain a CNN neural network model;
acquiring a real-time detection alarm condition, and inputting the real-time detection alarm condition into a CNN neural network model;
if the screening result of the CNN neural network model is 1, triggering an alarm;
and if the screening result of the CNN neural network model is 0, false early warning information is obtained.
In the embodiment, an artificial intelligence-convolutional neural network CNN method is used for building a filtering and warning platform, the platform is arranged at a cloud end, and front-end video information is transmitted into a platform CNN system to carry out deep learning of the cloud end platform. The method fully utilizes the human recognition, face recognition technology and infrared microwave perception technology of a camera, utilizes the computer vision technology to realize false alarm condition filtering, uncertain information police linkage and security treatment, automatically uploads real crime information to the public security bureau 110 platform, integrates a command and dispatch system, automatically commands the nearest police to hold a mobile phone APP on-site video visualization alarm and police management mechanism visualization video command, and realizes management and control, information severe judgment and a graph display.
Specifically, the CNN convolutional neural network is an item taking big data acquisition, deep learning and intelligent pushing as main technical frameworks, and the working principle is that static and dynamic information acquired by the front-end AI humanoid recognition camera and the AI facial recognition camera is uploaded to the CNN convolutional neural network for deep learning, and the result is treated in a representation form of '0=correct and 1=error'. 0 = correct = illegal intrusion or fire hazard = automatic push public security bureau video integration command platform. 1=error=memory information=filter false alarm records.
Further, the step of labeling the history warning condition is as follows:
extracting characteristic points of the historical police conditions, and detecting the characteristic points;
removing abnormal characteristic points;
constructing a scale model according to the reserved characteristic points;
determining feature vectors of the feature points on the basis of the scale model;
determining the direction of the feature points according to the feature vectors;
and determining the tags of the historical police conditions according to the directions of the feature points.
Furthermore, the method also comprises the step of dimension reduction on the clustering method of the item distribution approximation of the feature vector of the feature point based on the information entropy.
The specific method for acquiring the real-time warning condition comprises the following steps:
acquiring voice information and image information of a real-time alarm condition;
preprocessing voice information and image information;
and classifying the preprocessed voice information and the preprocessed image information according to a preset safety threshold value to obtain accurate voice information and accurate image information.
The specific process of preprocessing the voice information is as follows:
whether the decibel number of the voice information is smaller than a preset threshold value or not;
if not, eliminating noise by using a Gaussian algorithm;
if yes, the voice information is amplified, and noise is removed by using a Gaussian algorithm.
Preprocessing the image information includes: and cutting the edge of the image to remove the redundant noise point image.
The technical scheme has the following beneficial effects:
by preprocessing the real-time warning condition, the filtering precision of the early warning information is improved, and the calculated amount of the neural network is reduced.
The embodiment also discloses a system for screening early warning information, as shown in fig. 2, including:
historical alert labeling module: the method is used for acquiring the historical warning situation and labeling the historical warning situation, wherein the labels are 0 and 1;
the neural network training module: the method is used for constructing a CNN neural network, and training the CNN neural network by utilizing the history warning condition with the label;
the neural network model building module: the method is used for repeated cyclic training to obtain a CNN neural network model;
the real-time warning condition acquisition module is used for: the method comprises the steps of acquiring a real-time detection alarm condition, and inputting the real-time detection alarm condition into a CNN neural network model;
the early warning information screening module: the method is used for screening the early warning information: if the screening result of the CNN neural network model is 1, triggering an alarm; and if the screening result of the CNN neural network model is 0, false early warning information is obtained.
The real-time warning condition acquisition module acquires the real-time warning condition through the camera and the infrared information sensing device. The front end uses a human-shape recognition camera to set time in the camera, human-shape information in the time is uploaded, and false information possibly appearing during alarming is that the human shape of a clothing model and the lamplight of an automobile throw outdoor human shadows into the indoor, similar to human-shape articles and the like.
In the present specification, each embodiment is described in a progressive manner, and each embodiment is mainly described in a different point from other embodiments, and identical and similar parts between the embodiments are all enough to refer to each other. For the device disclosed in the embodiment, since it corresponds to the method disclosed in the embodiment, the description is relatively simple, and the relevant points refer to the description of the method section.
The previous description of the disclosed embodiments is provided to enable any person skilled in the art to make or use the present invention. Various modifications to these embodiments will be readily apparent to those skilled in the art, and the generic principles defined herein may be applied to other embodiments without departing from the spirit or scope of the invention. Thus, the present invention is not intended to be limited to the embodiments shown herein but is to be accorded the widest scope consistent with the principles and novel features disclosed herein.
Claims (6)
1. The early warning information screening method is characterized by comprising the following steps of:
acquiring a historical warning condition, and labeling the historical warning condition, wherein the labels are 0 and 1;
constructing a CNN neural network, and training the CNN neural network by using the history warning condition with the label;
performing repeated cyclic training to obtain a CNN neural network model;
acquiring a real-time monitoring alarm condition, and inputting the real-time monitoring alarm condition into a CNN neural network model; the real-time monitoring alarm condition comprises human shape information uploaded by a human shape recognition camera within a set time in the camera, false information which possibly occurs during alarm is that the human shape of a clothing model and the light of an automobile throw outdoor human shadows into the indoor, and the human shape is similar to articles;
if the screening result of the CNN neural network model is 1, triggering an alarm;
if the screening result of the CNN neural network model is 0, false early warning information is obtained;
the steps of labeling the historical warning condition are as follows:
extracting characteristic points of the historical police conditions, and detecting the characteristic points;
removing abnormal characteristic points;
constructing a scale model according to the reserved characteristic points;
determining feature vectors of the feature points on the basis of the scale model;
determining the direction of the feature points according to the feature vectors;
determining a tag of the historical police condition according to the direction of the feature points;
the specific method for acquiring the real-time monitoring alarm condition comprises the following steps:
acquiring voice information and image information of a real-time monitoring police condition;
preprocessing voice information and image information;
and classifying the preprocessed voice information and the preprocessed image information according to a preset safety threshold value to obtain accurate voice information and accurate image information.
2. The method for screening early warning information according to claim 1, further comprising performing dimension reduction on a clustering method of feature vectors of feature points based on item distribution approximation of information entropy.
3. The method for screening early warning information according to claim 1, wherein the specific process of preprocessing the voice information is as follows:
whether the decibel number of the voice information is smaller than a preset threshold value or not;
if not, eliminating noise by using a Gaussian algorithm;
if yes, signal amplification is carried out on the voice information, and noise is removed by means of Gaussian algorithm.
4. The method for screening early warning information according to claim 1, wherein preprocessing the image information comprises: and cutting the edge of the image to remove the redundant noise point image.
5. An early warning information screening system, comprising:
historical alert labeling module: the method comprises the steps of obtaining a historical warning condition, and labeling the historical warning condition, wherein the labels are 0 and 1;
the neural network training module: the method is used for constructing a CNN neural network, and training the CNN neural network by utilizing the history warning condition with the label;
the neural network model building module: the method is used for repeated cyclic training to obtain a CNN neural network model;
the real-time warning condition acquisition module is used for: the method comprises the steps of acquiring a real-time monitoring alarm condition, and inputting the real-time monitoring alarm condition into a CNN neural network model; the real-time monitoring alarm condition comprises human shape information uploaded by a human shape recognition camera within a set time in the camera, false information which possibly occurs during alarm is that the human shape of a clothing model and the light of an automobile throw outdoor human shadows into the indoor, and the human shape is similar to articles;
the early warning information screening module: the method is used for screening the early warning information: if the screening result of the CNN neural network model is 1, triggering an alarm; if the screening result of the CNN neural network model is 0, false early warning information is obtained;
the real-time alert acquisition module is specifically configured to: acquiring voice information and image information of a real-time monitoring police condition; preprocessing voice information and image information; classifying the preprocessed voice information and the preprocessed image information according to a preset safety threshold value to obtain accurate voice information and accurate image information;
the history warning condition labeling module is specifically used for: extracting characteristic points of the historical police conditions, and detecting the characteristic points; removing abnormal characteristic points; constructing a scale model according to the reserved characteristic points; determining feature vectors of the feature points on the basis of the scale model; determining the direction of the feature points according to the feature vectors; and determining the tags of the historical police conditions according to the directions of the feature points.
6. The system according to claim 5, wherein the real-time warning information acquisition module acquires the real-time monitoring warning information through a camera and an infrared information sensing device.
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