基于小波变换的运动目标检测方法

Borislav Antic, V. Crnojevic, D. Culibrk
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引用次数: 19

摘要

视频序列中的运动目标检测是计算机视觉中的一个重要问题。如果视频序列是由固定摄像机生成的,通常会尝试建立背景的统计模型,并进行适当的统计测试,将像素划分为前景或背景。这种方法对许多实验室测试序列是有效的,但在具有许多额外场景,照明和相机相关现象的现实监视系统中可能会使其不足。在这种情况下,采用帧差分方案可以获得较好的结果,但遗憾的是,该方案容易出现孔径问题,导致检测结果不一致。本文提出了一种多分辨率帧差分技术。首先将每帧图像分解为未消差的小波变换系数,然后分别对多个波段的小波系数进行差分处理。这些与频带相关的运动检测缓解了孔径问题,当融合时,它们产生更一致的运动目标检测。得到的检测结果大大方便了后续的处理步骤,如目标跟踪和识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient wavelet based detection of moving objects
Moving object detection in video sequences presents an important problem in computer vision. If a video sequence is generated by a stationary video camera, one usually attempts to build a statistical model of the background and an appropriate statistical test to classify pixels into foreground or background. This approach is efficient for many laboratory test sequences, but may render itself inadequate in real-life surveillance systems with many additional scene-, illumination- and camera-related phenomena. In this case better results can be obtained with frame differencing scheme, that is unfortunately prone to aperture problem and leads to inconsistent detections. In this paper, we propose a multiresolution frame differencing technique. Each frame is first decomposed into undecimated wavelet transform coefficients and after that, differencing scheme is applied on wavelet coefficients in several bands separately. These band-dependent motion detections alleviate the aperture problem and when fused, they produce more consistent moving object detection. The obtained detection results greatly facilitate later processing steps, like object tracking and recognition.
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