Solutions to motion self-occlusion problem in human activity analysis

Md Atiqur Rahman Ahad, J. Tan, H.S. Kim, S. Ishikawa
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引用次数: 7

Abstract

Human motion self-occlusion due to motion overlapping in the same region is a daunting task to solve. Various motion-recognition methods either bypass this problem or solve this problem in complex manner. Appearance-based template matching paradigms are simpler and hence faster approaches for activity analysis. In this paper, we concentrate on motion self-occlusion problem due to motion overlapping in various complex activities for recognition. This paper illustrates the directional motion history image concept and compares this motion representation approach with multilevel motion history representation and hierarchical motion history histogram representation to solve the self-occlusion problem of basic motion history image representation. We employ some complex aerobics and find the robustness of our method compared to other methods for this self-occlusion problem. We employ seven higher order Hu moments to compute the feature vector for each activity. Afterwards, k-nearest neighbor method is utilized for classification with leave-one-out paradigm. The comparative results clearly demonstrate the superiority of our method than other recent approaches.
人体活动分析中运动自遮挡问题的解决方法
由于同一区域的运动重叠引起的人体运动自遮挡是一个令人望而生畏的问题。各种运动识别方法或绕过这个问题,或以复杂的方式解决这个问题。基于外观的模板匹配范例是活动分析的更简单、因此更快的方法。本文主要研究各种复杂活动中由于运动重叠而产生的运动自遮挡问题。本文阐述了定向运动历史图像的概念,并将其与多级运动历史表示和分层运动历史直方图表示进行了比较,解决了基本运动历史图像表示的自遮挡问题。我们使用了一些复杂的有氧运动,并发现与其他方法相比,我们的方法具有鲁棒性。我们使用七个高阶Hu矩来计算每个活动的特征向量。然后,利用k近邻法进行“留一”分类。对比结果清楚地表明我们的方法比其他最近的方法优越。
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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