Moving object detecting and tracing method in complex scene

A technology of moving targets and complex scenes, applied in the field of intelligent visual monitoring, can solve the problems of inability to achieve real-time and effective detection, inability to achieve early warning of abnormal events, missed alarms and false alarms.

Inactive Publication Date: 2008-03-12
HUNAN UNIV
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Problems solved by technology

[0003] At present, video surveillance systems using cameras as the main sensor are widely used in various occasions such as banks, parking lots, supermarkets, hotels, residential quarters, etc., but the collection, transmission, display and storage of image data in traditional analog surveillance systems Most of them are based on analog signals, requiring manual continuous observation of multiple monitor screens, which not only consumes manpower and material resources, but also often causes missed and false alarms, and cannot effectively detect and stop dangerous events in real time, thus greatly reducing the reliability of the system. reliability and reliability, video image data is often only used as evidence for post-accident processing and loses its active real-time characteristics, let alone abnormal event warning

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  • Moving object detecting and tracing method in complex scene

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Embodiment Construction

[0067] The present invention will be further described in detail in conjunction with the accompanying drawings and specific implementation process.

[0068] The invention discloses a moving target detection and tracking method in complex scenes, the steps are:

[0069] (1), Multi-moving target detection based on adaptive non-parametric kernel density estimation:

[0070] 1. Using the previous t frame images (no target) in the monitoring video as the initial background model, i.e. the initial sampling set;

[0071] ②. Start to detect the target from the input t+1th frame image: the pixel point of the current frame image is used as the estimated point, according to the adaptive non-parametric kernel density estimation method, the probability value that the estimated point belongs to the background model is obtained, and the current The frame pixel is used as a new sampling point to update the background model, that is, to update the sampling set;

[0072] 3. Determine whether ...

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Abstract

The present invention discloses method for moving target detection and tracking in a complex scene. The method comprises two steps of multiple moving target detection and multiple moving target tracking: in the multiple moving target detection, a background model based on self adapting nonparametric kernel density estimation is established with the aim at the monitoring of the complex scene, therefore the disturbance of the movement of tiny objects can be effectively suppressed, the target shadow is eliminated, and the multiple moving target is detected; in the multiple moving target tracking, the target model is established, the moving state of the target is confirmed through ''matching matrix'', and corresponding tracking strategy is adopted according to the different movement condition of the target. Target information is ''recovered'' through the probabilistic reasoning method, and the target screening degree of the target is analyzed with the aim at the problem that multiple targets screen mutually. The algorithm of the present invention can well realize the moving target tracking, obtains the trace of the moving target, and has good real time and ability of adapting to the environmental variation. The present invention has wide application range and high accuracy, therefore being a core method for intelligent vision monitoring with versatility.

Description

technical field [0001] The invention mainly relates to the field of intelligent visual monitoring, in particular to a moving target detection and tracking method in complex scenes. Background technique [0002] The vision processing system uses image sensors to observe moving objects (such as pedestrians, vehicles, etc.) in the monitoring scene in real time. Describe the behavior of the targets individually and with each other. Visual surveillance technology appeared in the 1960s, and the development of video-based surveillance systems started from analog surveillance (CCTV). The robustness and automation of the surveillance system are low. With the development of technologies and equipment required for visual monitoring such as sensors, computer software and hardware, signal processing and communication, the wide application and rapid development of visual monitoring has a solid material foundation. It is possible to use high-performance computers to acquire and process i...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): H04N7/18G06T7/20
Inventor 王耀南万琴王磊
Owner HUNAN UNIV
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