一种鲁棒人体检测和遮挡处理人体形状模型的贝叶斯框架

H. Eng, Junxian Wang, A. H. Kam, W. Yau
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引用次数: 31

摘要

对真实环境进行自动监控的一个挑战是,实际的无约束设置会带来各种困难场景的出现。我们在以下具有挑战性的情况下解决自动监视的前景检测:i)前景由于与背景非常相似而部分隐藏,ii)前景表示多个对象不可分割,由于遮挡而形成一个大的连续斑点。为了构建一个鲁棒的系统,我们提出了一种新的基于贝叶斯公式的前景检测框架,包括自下而上和自上而下的方法。我们首先提出了一种基于区域的背景减法和一种局部空间分割方案作为自下而上的前景检测步骤。然后,我们将人体形状模型作为前景验证和遮挡处理的自上而下步骤。当找到一个最大的后验值,与该方法给出的前景的最佳描述相对应时,进行分割。这种自底向上和自顶向下方法的集成直接导致在敌对的真实环境中处理具有挑战性的情况时具有更强大的性能。该算法在公共室外游泳池现场监控系统拍摄的真实视频序列上进行了测试,获得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian framework for robust human detection and occlusion handling human shape model
One challenging aspect of automated surveillance for real environments is the occurrences of various difficult scenarios brought about by practical unconstrained settings. We address foreground detection for automated surveillance under the following challenging situations: i) foregrounds being partially hidden due to close similarities to the background, and ii) foregrounds representing multiple objects being inseparable, forming a large contiguous blob due to occlusion. To build a robust system, we present a new foreground detection framework based on Bayesian formulation, comprising both bottom-up and top-down approaches. We first propose a region-based background subtraction and a localized spatial segmentation scheme as the bottom-up steps for foreground detection. We then incorporate a human shape model as the top-down step for foreground validation and occlusion handling. Segmentation is obtained when a maximum posteriori value is found, corresponding to the best description about foregrounds given by the approach. Such integration of bottom-up and top-down approaches leads directly to more robust performance in handling challenging situations within hostile real environments. Promising results are obtained when the algorithm is tested on real video sequences captured from a live surveillance system that operates at a public outdoor swimming pool.
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