Action Detection in Crowded Videos Using Masks

Ping Guo, Z. Miao
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引用次数: 3

Abstract

In this paper, we investigate the task of human action detection in crowded videos. Different from action analysis in clean scenes, action detection in crowded environments is difficult due to the cluttered backgrounds, high densities of people and partial occlusions. This paper proposes a method for action detection based on masks. No human segmentation or tracking technique is required. To cope with the cluttered and crowded backgrounds, shape and motion templates are built and the shape templates are used as masks for feature refining. In order to handle the partial occlusion problem, only the moving body parts in each motion are involved in action training. Experiments using our approach are conducted on the CMU dataset with encouraging results.
在拥挤的视频中使用蒙版进行动作检测
在本文中,我们研究了拥挤视频中人类动作检测的任务。与干净场景下的动作分析不同,拥挤环境下由于背景杂乱、人群密集、局部遮挡等原因,动作检测难度较大。提出了一种基于掩码的动作检测方法。不需要人工分割或跟踪技术。为了应对杂乱拥挤的背景,构建了形状和运动模板,并将形状模板用作特征细化的蒙版。为了处理局部遮挡问题,在动作训练中只涉及每个动作中运动的身体部位。使用我们的方法在CMU数据集上进行了实验,取得了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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