SAMHIS:一种用于人体活动识别的鲁棒运动空间

S. Raghuraman, B. Prabhakaran
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引用次数: 1

摘要

近年来,人们提出了许多基于局部描述符的人类活动识别方法,这些方法在具有挑战性的数据集上表现良好。然而,这些方法大多计算量大,提取不相关的背景特征,无法捕获全局时间信息。我们建议通过引入一个紧凑和健壮的运动空间来克服这些问题,该空间可用于使用局部描述符提取活动的空间和时间方面。我们提出了速度适应运动历史图像空间(SAMHIS),它采用运动历史图像的一种变体来表示运动。这个空间既缓解了自我遮挡,也缓解了与不同类型的运动相关的速度问题。我们继续展示使用标准的视觉词袋模型,从这个空间中提取基于外观的局部描述符对于识别活动非常有效。我们的方法在KTH和Weizmann数据集上产生了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SAMHIS: A Robust Motion Space for Human Activity Recognition
In recent years, many local descriptor based approaches have been proposed for human activity recognition, which perform well on challenging datasets. However, most of these approaches are computationally intensive, extract irrelevant background features and fail to capture global temporal information. We propose to overcome these issues by introducing a compact and robust motion space that can be used to extract both spatial and temporal aspects of activities using local descriptors. We present Speed Adapted Motion History Image Space (SAMHIS) that employs a variant of Motion History Image for representing motion. This space alleviates both self-occlusion as well as the speed-related issues associated with different kinds of motion. We go on to show using a standard bag of visual words model that extracting appearance based local descriptors from this space is very effective for recognizing activity. Our approach yields promising results on the KTH and Weizmann dataset.
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