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Activity-Based Person Identification Using Discriminative Sparse Projections and Orthogonal Ensemble Metric Learning

机译:基于区分性稀疏投影和正交集成度量学习的基于活动的人员识别

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In this paper, we propose an activity-based human identification approach using discriminative sparse projections (DSP) and orthogonal ensemble metric learning (OEML). Unlike gait recognition which recognizes person only from his/her walking activity, this study aims to identify people from more general types of human activities such as eating, drinking, running, and so on. That is because people may not always walk in the scene and gait recognition fails to work in this scenario. Given an activity video, human body mask in each frame is first extracted by background substraction. Then, we propose a DSP method to map these body masks into a low-dimensional subspace and cluster them into a number of clusters to form a dictionary, simultaneously. Subsequently, each video clip is pooled as a histogram feature for activity representation. Lastly, we propose an OEML method to learn a similarity distance metric to exploit discriminative information for recognition. Experimental results show the effectiveness of our proposed approach and better recognition rate is achieved than state-of-the-art methods.
机译:在本文中,我们提出了一种使用区分性稀疏投影(DSP)和正交集成度量学习(OEML)的基于活动的人类识别方法。与仅通过步行活动识别人的步态识别不同,本研究旨在从更一般的人类活动(例如饮食,跑步,跑步等)中识别人。这是因为在这种情况下,人们可能并不总是在场景中走动并且步态识别无法正常工作。给定一个活动视频,首先通过背景减法提取每个帧中的人体蒙版。然后,我们提出一种DSP方法,将这些人体罩映射到一个低维子空间中,并将它们聚类为多个聚类以同时形成字典。随后,将每个视频剪辑合并为用于活动表示的直方图特征。最后,我们提出了一种OEML方法来学习相似性距离度量,以利用判别信息进行识别。实验结果表明,我们提出的方法是有效的,并且与最新技术相比,识别率更高。

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