首页> 外文会议>19th European signal processing conference (EUSIPCO 2011). >PERSON SPECIFIC ACTIVITY RECOGNITION USING FUZZY LEARNING AND DISCRIMINANT ANALYSIS
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PERSON SPECIFIC ACTIVITY RECOGNITION USING FUZZY LEARNING AND DISCRIMINANT ANALYSIS

机译:基于模糊学习和判别分析的人员特定活动识别

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摘要

One of the major issues that activity recognition methods should be able to face is the style variations observed in the execution of activities performed by different humans. In order to address this issue we propose a person-specific activity recognition framework in which human identification proceeds activity recognition. After recognizing the ID of the human depicted in a video stream, a person-specific activity classifier is responsible to recognize the activity performed by the human. Exploiting the enriched human body information captured by a multi-camera setup, view-invariant person and activity representations are obtained. The classification procedure involves Fuzzy Vector Quantization and Linear Discriminant Analysis. The proposed method is applied on drinking and eating activity recognition as well as on other activity recognition tasks. Experiments show that the person-specific approach outperforms the person-independent one.
机译:活动识别方法应该能够面对的主要问题之一是在不同人执行的活动中观察到的样式变化。为了解决这个问题,我们提出了一个特定于人的活动识别框架,在该框架中,人类识别可以进行活动识别。在识别视频流中描绘的人的ID之后,特定于人的活动分类器负责识别人所执行的活动。利用多摄像机设置捕获的丰富的人体信息,可以获得视野不变的人和活动表示。分类程序包括模糊矢量量化和线性判别分析。所提出的方法被应用于饮食活动识别以及其他活动识别任务。实验表明,特定于人的方法优于独立于人的方法。

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