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A robust framework for joint background/foreground segmentation of complex video scenes filmed with freely moving camera

机译:一个强大的框架,用于使用自由移动的摄像机拍摄的复杂视频场景的联合背景/前景分割

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摘要

This paper explores a robust rcgion-based general framework for discriminating between background and foreground objects within a complex video sequence. The proposed framework works under difficult conditions such as dynamic background and nominally moving camera. The originality of this work lies essentially in our use of the semantic information provided by the regions while simultaneously identifying novel objects (foreground) and non-novel ones (background). The information of background regions is exploited to make moving objects detection more efficient, and vice-versa. In fact, an initial panoramic background is modeled using region-based mosaicing in order to be sufficiently robust to noise from lighting effects and shadowing by foreground objects. After the elimination of the camera movement using motion compensation, the resulting panoramic image should essentially contain the background and the ghost-like traces of the moving objects. Then, while comparing the panoramic image of the background with the individual frames, a simple median-based background subtraction permits a rough identification of foreground objects. Joint background-foreground validation, based on region segmentation, is then used for a further examination of individual foreground pixels intended to eliminate false positives and to localize shadow effects. Thus, we first obtain a foreground mask from a slow-adapting algorithm, and then validate foreground pixels (moving visual objects + shadows) by a simple moving object model built by using both background and foreground regions. The tests realized on various well-known challenging real videos (across a variety of domains) show clearly the robustness of the suggested solution. This solution, which is relatively computationally inexpensive, can be used under difficult conditions such as dynamic background, nominally moving camera and shadows.In addition to the visual evaluation, spatial-based evaluation statistics, given hand-labeled ground truth, has been used as a performance measure of moving visual objects detection.
机译:本文探索了一种基于rcgion的鲁棒通用框架,用于区分复杂视频序列中的背景和前景对象。所提出的框架可以在困难的条件下工作,例如动态背景和名义上移动的摄像机。这项工作的独创性基本上在于我们使用区域提供的语义信息,同时识别新颖的对象(前景)和非新颖的对象(背景)。利用背景区域的信息可以更有效地检测运动对象,反之亦然。实际上,使用基于区域的马赛克对初始全景背景进行建模,以便对来自照明效果的噪声和前景物体的阴影足够鲁棒。使用运动补偿消除摄像机运动后,得到的全景图像应基本上包含运动对象的背景和类似鬼影的痕迹。然后,在将背景的全景图像与各个帧进行比较的同时,简单的基于中值的背景减法可以粗略地识别前景对象。然后,基于区域分割的联合背景与前景验证将用于进一步检查各个前景像素,以消除误报并定位阴影效果。因此,我们首先从慢速适应算法获得前景蒙版,然后通过使用背景和前景区域构建的简单运动对象模型来验证前景像素(运动视觉对象+阴影)。在各种著名的具有挑战性的真实视频(跨多个领域)上进行的测试清楚地表明了所建议解决方案的稳定性。该解决方案的计算成本相对较低,可在困难的条件下使用,例如动态背景,名义上移动的摄像机和阴影。除了视觉评估外,还使用了基于空间的评估统计数据(给定了手工标记的地面真实情况)运动视觉对象检测的性能度量。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2010年第3期|175-205|共31页
  • 作者单位

    Equipe de Recherche Systemes Intelligents en Imagerie et Vision Artificielle (SUVA) Institut Superieur d'Infonnatique, 2 Rue Abou Rayhane El Bayrouni, 2080 Ariana, Tunisia;

    Equipe de Recherche Systemes Intelligents en Imagerie et Vision Artificielle (SUVA) Institut Superieur d'Infonnatique, 2 Rue Abou Rayhane El Bayrouni, 2080 Ariana, Tunisia;

    Equipe de Recherche Systemes Intelligents en Imagerie et Vision Artificielle (SUVA) Institut Superieur d'Infonnatique, 2 Rue Abou Rayhane El Bayrouni, 2080 Ariana, Tunisia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    video segmentation; motion compensation; moving objects; background; shadow identification;

    机译:视频分割;运动补偿;移动物体;背景;阴影识别;

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