外文翻译---运动图像和运动矢量检测综述
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1、外文文献: A SURVEY ON MOTION IMAGE ANDTHE SEARCH OF MOTION VECTOR After motion detection, surveillance systems generally track moving objects from one frame to another in an image sequence. The tracking algorithms usually have considerable intersection with motion detection during processing. Tracking o
2、ver time typically involves matching objects in consecutive frames using features such as points, lines or blobs. Useful mathematical tools for tracking include the Kalman filter, the Condensation algorithm, the dynamic Bayesian network, the geodesic method, etc. Tracking methods are divided into fo
3、ur major categories: region-based tracking, active-contour-based tracking, feature based tracking, and model-based tracking. It should be pointed out that this classification is not absolute in that algorithms from different categories can be integrated together. A. Region-Based Tracking Region-base
4、d tracking algorithms track objects according to variations of the image regions corresponding to the moving objects. For these algorithms, the background image is maintained dynamically, and motion regions are usually detected by subtracting the background from the current image. Wren etal. explore
5、 the use of small blob features to track a single human in an indoor environment. In their work, a human body is considered as a combination of some blobs respectively representing various body parts such as head, torso and the four limbs. Meanwhile, both human body and background scene are modeled
6、with Gaussian distributions of pixel values. Finally, the pixels belonging to the human body are assigned to the different body parts blobs using the log-likelihood measure. Therefore, by tracking each small blob, the moving human is successfully tracked. Recently, McKenna et al. 11 propose an adapt
7、ive background subtraction method in which color and gradient information are combined to cope with shadows and unreliable color cues in motion segmentation. Tracking is then performed at three levels of abstraction: regions, people, and groups. Each region has a bounding box and regions can merge a
8、nd split. A human is composed of one or more regions grouped together under the condition of geometric structure constraints on the human body, and a human group consists of one or more people grouped together. Therefore, using the region tracker and the individual color appearance model, perfect tr
9、acking of multiple people is achieved, even during occlusion. As far as region-based vehicle tracking is concerned, there are some typical systems such as the CMS mobilized system supported by the Federal Highway Administration (FHWA), at the Jet Propulsion Laboratory (JPL), and the PATH system deve
10、loped by the Berkeley group. Although they work well in scenes containing only a few objects (such as highways), region-based tracking algorithms cannot reliably handle occlusion between objects. Furthermore, as these algorithms only obtain the tracking results at the region level and are essentiall
11、y procedures for motion detection, the outline or 3-D pose of objects cannot be acquired. (The 3-D pose of an object consists of the position and orientation of the object).Accordingly, these algorithms cannot satisfy the requirement for surveillance against a cluttered background or with multiple m
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- 外文 翻译 运动 图像 图象 以及 矢量 检测 综述
