Vehicle detection method

A vehicle detection and vehicle technology, applied in instruments, character and pattern recognition, computer parts, etc., can solve problems such as increased hardware cost, greater impact, and vehicle missed detection, to improve detection rate, fast training, and reduce errors. The effect of the detection rate

Inactive Publication Date: 2012-09-12
天津天地伟业物联网技术有限公司
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AI Technical Summary

Problems solved by technology

[0002] In the existing vehicle detection methods, one implementation method is vehicle detection based on background modeling. This method uses a background modeling method with a certain strategy to extract the foreground moving area, and then further judges whether there is a vehicle. However, this method is affected by light. has a greater impact, and belongs to the earlier primary detection method; another implementation method is based on the two-stage method of vehicle hypothesis generation and hypothesis verification, which is based on certain features (such as the shadow under the vehicle, the vehicle's Symmetry, gradient, edge, etc.) to generate vehicle assumptions, and then extract features to verify the assumptions. This method has high requirements for vehicle assumption generation, and vehicles that do not meet the assumption generation conditions (such as vehicle congestion, cloudy, etc.) will be missed. check
In addition, the method based on histogram of gradients (HOG) has been successfully applied to pedestrian detection, but its running speed is difficult to achieve real-time performance. Corresponding hardware cost

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Embodiment Construction

[0017] The present invention will be described in detail below with reference to the drawings and embodiments.

[0018] figure 1 Is a schematic diagram of the process of the vehicle detection method of the present invention; figure 2 It is an example diagram of the use method of the LBP operator in the vehicle detection method of the present invention; image 3 It is a schematic diagram of the feature extraction method of the LBP space histogram in the vehicle detection method of the present invention; Figure 4 It is a schematic diagram of a vehicle detection method that uses a combination of multiple classifiers.

[0019] Such as figure 1 As shown, the vehicle detection method of the present invention uses LBP operator to represent pixel-level features, LBP histogram represents pixel block features, and LBP spatial histogram with spatial information represents vehicle spatial structure information; LBP histogram features are used to train linear SVM classifier, and use the boost...

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Abstract

A vehicle detection method comprises two parts: training of cascade multiple classifier and using the classifiers to carry out vehicle detection. The method is characterized by: using a LBP operator representation pixel level characteristic and a LBP histogram representation pixel block characteristic, and using a LBP spatial histogram with spatial information to characterize spatial structure information of the vehicle; using the LBP histogram characteristic to train a linear SVM classifier, using a boost method to train a second layer HIKSVM classifier, and detecting the vehicle according to a final classifier result. The LBP spatial histogram characteristic is used to characterize the vehicle information so that a vehicle outline can be rapidly characterized. Certain tolerance is possessed to a variety of an intra-class characteristic and strong distinguish is possessed to the variety of the outer class. The linear SVM classifier is used so that purposes of rapid training and rapid detection can be achieved. And real-time performance can be achieved too. The boost training method is used to train the second layer HIKSVM classifier so that a detection rate of the vehicle can be increased.

Description

Technical field [0001] The present invention relates to the technical field of video surveillance, in particular to a vehicle detection method based on LBP spatial histogram features and cascaded multi-classifiers, suitable for different scenes and different lighting, and achieving real-time performance. Background technique [0002] In the existing vehicle detection methods, one implementation method is vehicle detection based on background modeling. This method uses a certain strategic background modeling method to extract the foreground motion area, and then further determines whether there is a vehicle, but the method is illuminated The impact of the vehicle is relatively large, which belongs to the earlier primary detection method; the other implementation method is based on the two-stage method of vehicle hypothesis generation and hypothesis verification, which is based on certain characteristics (such as the shadow under the vehicle, the vehicle’s Symmetry, gradient, edge,...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62
Inventor 戴林李志国
Owner 天津天地伟业物联网技术有限公司
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