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Study On Moving Object Detection From Video Sequence Images Of Complex Traffic Scene

Posted on:2006-08-17Degree:DoctorType:Dissertation
Country:ChinaCandidate:P L ZhangFull Text:PDF
GTID:1118360182965751Subject:Photogrammetry and Remote Sensing
Abstract/Summary:PDF Full Text Request
In developed countries, video surveillance system is widely used in safeguarding, real-time recording and alerting systems in banks, power systems, traffic and transportation, security, warehouse, architecture and military equipments. In that case, the analysis of moving objects based on video time serial images becomes a very important branch of Computer Vision (CV) Research. In recent years, as a result of the rapid progress of our national economy and advance of general national power, the desirous and use of intellectual surveillance systems is more and more wide in protecting, secure guarding and modern management in key industries such as military, banking and traffic controlling. As an important technique support of vision surveillance system, the analysis of time serial images naturally becomes an important field in the CV domain. Especially as the acceleration of urbanization, the quantity of motor vehicles is increasing year by year, but the infrastructure of urban traffic is comparatively lagged behind, so the pressure of urban traffic system has growing badly. How to provide a traffic environment as comfortable as possible becomes an import problem in metropolitans all over the world. The implement of traffic-intelligence and modern traffic management becomes a good solution for this problem. In that case, the movement analysis of time serial images from traffic video monitors has widely interested many researchers of CV and image processing.With the increasing traffic problems year by year, the management by scientific and intelligentizing of urban traffic has become the universal requirement of various main urban traffic management, with the expediting of information technology and information progress, each main city in our Country has began using information technology to enhance the modernization level of urban traffic management, and provide scientific data auspice for modern urban traffic management, thus some cities begin using sensor for measuring in traffic parameter widely, such as detector of magnetic circle and so on. However, because of the connatural weakness of detector of magnetic circle such as just carry through in measure of traffic flux, and it would be destroyed easily when installed on the ground, and so on. So the application of it is limited. Nevertheless, video surveillance system base on vision can't be destroyed easily and it could measure multi-kinds of traffic parameter, because of that, it loved by the departments of traffic management and research. So acquiring automatization in analyzing and comprehending of a great deal of traffic surveillance data is the main issue for people. How to pick up dynamic information from a great deal of traffic surveillance data automatically and scientificly became administrators' broad requirement, and it also became researchers' hotspot in research, this article is brought forward in the background, its goal is to build up a suit of scientific analyzing method and technique instrument in acquiring traffic video surveillance data, so as to provide scientific dataauspice for traffic management.Analyzing serial dynamic images is one of the right research hotspots in the area of computer vision and images analyzing, base on analyzing the status quo of research inside and overseas in this area, this article's main goal is researching the exact rebuilding method of complex scene and background base on arithmetic of decreasing the background, to exactly divide the dynamic objects by rebuilding the exact background models, and pursue the dynamic objects. Minutely analyzing a great deal of research results inside and overseas in the direction of research goal, this article summarize the basic issue of analyzing of serial dynamic images, and bring forward a generic progress and research frame about picking up dynamic objects in background decreasing.The detection of moving objects is the first stage of vision-based urban traffic video monitor time serial images, which is also the key stage. A precise detection of moving objects is the basic of object tracking, classifying, recognition and parameter acquiring, in which home and abroad researchers has done a lot in recent years, and many methods have been put forward. Although, the detection of moving objects in a complex scene has never been done well. This thesis objects in complex urban traffic scene, starting from the "background minus moving objects" method, and the theme is precise background model reconstruction, which tries to achieve the goal of precise movement segmentation by precise background portraying. As a result, this article is based on classic Kalman Theories, has investigated the application methods of Kalman Filter theories in background model reconstruction of complex scene, and analyzed the advantages and disadvantages of Kalman linear optimal filter theory applied in background model reconstruction of complex scene in different viewpoint; since the disadvantage of Kalman Filter in background model reconstruction of complex scenes, we proposed a new algorithm for complex scene time series image background model reconstruction, which derives from the theory that background signal energy varies by time, and is supported by the theory of Lebesgue measurement and integral theory. What's more, the validation of algorithm is verified by a lot of experiments.Dynamic division is the important phase of dynamic analyzing, in the progress of dynamic division, the choose of dividing threshold is a important and necessarily calculated issue, to solve this problem, this article bring forward the theory of weighed enhancing mean threshold for decreasing background images, consequently it solve the problems of choosing dynamic threshold automatically in dynamic division, it decrease the infection due to manual interference in choosing threshold, and validate the validity of this method by experimenting.Multi-object tracking is an important stage of urban traffic video image series movement analysis after moving object detection and before movement parameter acquiring. Most of existing research on this topic is achieved on the basic of the feature of objects. This article sponsors the tracking method based on the object's centroid after the analysis of research object's actual feature.So, the multi-object search in moving variable slide window (VSW) algorithms by continuous modifying the size and center of window is put forward to achieve the segmentation and centroid measurement, which is verified to be valid by lots of experiments. Consequently it provide new solving artifice for pursuing multi-objects.Pursuing dynamic objects is one of the main phases in dynamic analyzing, it is the first phase in picking up dynamic parameters after picking up dynamic objects and dividing multi-objects, it also is the analyse basic of other dynamic parameters(such as moving speed, the estimate of dynamic locus, the information of the transformation of cars). In total, there are two main dynamic Pursuing methods that one base on character and the other base on light flow . The one that base on light flow have some weakness in dynamic analyzing in complex sense as we mention in the chapter in this article, so, this article mainly base on the theory that base on character, it brings forward the thought of pursuing mobiles that base on the center of mass, that is pursuing mobiles' Dynamic progress by pursuing the center of mass. Moreover pursuing the center of mass is by Kalman Filter theories, experiments indicate that the thought has nice purpose whether in the perfect sense inside or in actual complex traffic sense outside. Moreover the study of this article indicate that the pursuing thought that base on the center of mass also has definite applied value for pursuing multi-objects.Additionally, it is valuable in practice to extract motion objects based on features. Finally, a proposal that corners features of rigid objects are used has been discussed in this paper. Since traditional matching methods with correlation coefficients often keep low precision, a novel approach has been presented in this paper, the approach performs local Walsh transformation of corners features of rigid objects from neighbor frame images, then match between objects with feature of local entropy. Experiments show that high precision of matching has been achieved using the proposed method.To evaluate accuracy and efficiency of the proposals in this paper, a prototype experimental system has been developed using oriented object programming.Summarily, a general frame to extract motion objects from complex background has been suggested by analyzing previous studies. Accordingly, some algorithms have been proposed specifically in city communication based on traditional theories of motion analysis, i.e. reconstruction of background model in complex scene, dynamic threshold selected automatically, segmentation of multi-objects and measurement of quality center, objects trace based on kalman filter and quality center. Finally, advantages and disadvantages of the proposed methods in this papers have been given, as well as further research.
Keywords/Search Tags:moving objects, time serial images, movement segmentation, multi-object detection, object tracking
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