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Traffic target tracking method based on optical flow and local invariant features

A local invariant feature, target tracking technology, applied in image data processing, instruments, computing and other directions, can solve the problems of easy failure of objects, poor real-time performance, large computing load, etc., to achieve good robustness and avoid repeated operations.

Active Publication Date: 2016-12-07
XUZHOU UNIV OF TECH
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Problems solved by technology

[0005] In order to solve the problems of the existing optical flow target tracking methods, such as heavy computational load, poor real-time performance, inapplicability to environments with changing illumination, and easy failure in tracking fast-moving objects, the present invention provides a method based on optical flow and local invariance The characteristic traffic target tracking method, which is accurate and fast in matching, reduces redundant data, and has strong adaptability. Compared with the traditional method, the vehicle identification ability has obvious advantages, and has a good application prospect in the intelligent traffic target tracking system

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  • Traffic target tracking method based on optical flow and local invariant features

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Embodiment Construction

[0036] A traffic target tracking method based on optical flow and local invariant features, first using Gaussian background modeling to extract foreground targets, then using SURF local scale invariant feature transformation algorithm to detect foreground target feature points, and then constructing image multi-resolution wavelet Pyramid improves the LK sparse optical flow method to detect and track feature points, and formulates an adaptive template real-time update strategy to judge whether it is the last frame, if so, end tracking; if not, perform template update judgment; if no template update is required, continue Tracking; if template update is required, update the tracking window according to the template update method, detect SURF feature points, update feature point weights, delete low-weight feature points, and continue tracking.

[0037] A traffic target tracking method based on optical flow and local invariant features, its specific implementation steps are as follo...

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Abstract

The invention discloses a traffic target tracking method based on optical flow and local invariant features. The method comprises the steps that firstly, an initial template is constructed for an input video image through Gaussian background modeling, and a foreground target is extracted; next, a target characteristic point is detected through the SURF transformation algorithm; then, the characteristic point is detected and the target is tracked by constructing an image multi-resolution wavelet pyramid and improving an LK sparse optical flow method, an adaptive template real-time updating strategy is made, whether the template is the last frame or not is judged, and if yes, tracking is ended; if the template is not the last frame, template updating judgment is conducted; if template updating is not needed, tracking is continued; if template updating is needed, tracking is continued after the template and a tracking window are updated according to an updating method. Through the method, matching is accurate and rapid, redundant data is reduced, adaptability is high, high robustness is achieved in respect of target vehicle deformation, high speed, noise, uneven illumination, partial covering and other complicated environments, and the vehicle recognition ability is improved; the method has obvious advantages compared with a traditional method and has good application prospects in intelligent transportation target tracking systems.

Description

technical field [0001] The invention relates to the problem of traffic target tracking in image processing and video monitoring technology, in particular to a traffic target tracking method based on optical flow and local invariant features. Background technique [0002] Target detection and tracking is one of the complex and hot research topics in the field of computer vision today; with the economic development, the number of vehicles continues to increase, and traffic accidents occur frequently; the moving target detection and tracking technology in the intelligent transportation system combines image processing, computer and automatic control Technology, real-time monitoring of traffic targets, extraction of target location, morphological structure, motion parameters and other information, to provide decision-making basis for improving traffic conditions; in recent years, optical flow technology has attracted widespread attention in the fields of pattern recognition, comp...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T5/00G06T7/00G06T7/20
CPCG06T7/20G06T2207/20036G06T2207/20004G06T2207/20016G06T2207/10016G06T2207/30236G06T2207/30232G06T5/70
Inventor 厉丹鲍蓉肖理庆党向盈
Owner XUZHOU UNIV OF TECH
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