基于贝叶斯三维模型的拥挤场景中人检测高效优化

Lu Wang, N. Yung
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引用次数: 9

摘要

本文采用基于贝叶斯三维模型的方法解决了拥挤场景下的人体检测问题。首先由头部检测器和足部检测器提名候选人体,然后进行优化,找到候选人体的最佳配置及其相应的形状模型。在每次迭代中将相互关联的候选对象分解为未遮挡的候选对象和被遮挡的候选对象,然后对未遮挡的候选对象进行模型匹配,从而得到解。为此,除了一些明显的线索外,我们还推导了一个描述对象间关系的图,以避免不合理的分解。该优化方法的优点是计算量与贪心优化方法相似,而性能与全局优化方法相当。模型匹配采用先验知识和图像似然相结合的方法,其中先验包括现实世界中单个形状模型的分布和物体间距离的限制,图像似然由前景提取和边缘信息提供。模型匹配完成后,采用基于最小描述长度的验证与拒绝策略,对具有可靠匹配结果的候选模型进行确认。在公开可用的鱼子酱数据集和我们自己构建的具有挑战性的数据集上对该方法进行了测试。实验结果证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian 3D model based human detection in crowded scenes using efficient optimization
In this paper, we solve the problem of human detection in crowded scenes using a Bayesian 3D model based method. Human candidates are first nominated by a head detector and a foot detector, then optimization is performed to find the best configuration of the candidates and their corresponding shape models. The solution is obtained by decomposing the mutually related candidates into un-occluded ones and occluded ones in each iteration, and then performing model matching for the un-occluded candidates. To this end, in addition to some obvious clues, we also derive a graph that depicts the inter-object relation so that unreasonable decomposition is avoided. The merit of the proposed optimization procedure is that its computational cost is similar to the greedy optimization methods while its performance is comparable to the global optimization approaches. For model matching, it is performed by employing both prior knowledge and image likelihood, where the priors include the distribution of individual shape models and the restriction on the inter-object distance in real world, and image likelihood is provided by foreground extraction and the edge information. After the model matching, a validation and rejection strategy based on minimum description length is applied to confirm the candidates that have reliable matching results. The proposed method is tested on both the publicly available Caviar dataset and a challenging dataset constructed by ourselves. The experimental results demonstrate the effectiveness of our approach.
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