人类活动识别的贝叶斯方法

A. Madabhushi, J. Aggarwal
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引用次数: 106

摘要

提出了一种自动识别人类行为的方法。我们使用了一种新的方法来识别人类活动,该方法结合了贝叶斯框架。通过在单目灰度图像序列的连续帧中跟踪受试者头部的运动,我们可以识别正面或侧面视图中的动作。从CCD相机捕获的输入序列与存储的动作模型相匹配。识别出与输入序列最接近的操作。在现在的实施中,这些动作包括坐下、站起来、弯腰、起身、拥抱、蹲起来、从蹲起来、侧身弯腰、向后跌倒和行走。这种方法适用于需要持续监测人类活动的环境,例如百货商店和机场。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian approach to human activity recognition
Presents a methodology for automatically identifying human action. We use a new approach to human activity recognition that incorporates a Bayesian framework. By tracking the movement of the head of the subject over consecutive frames of monocular grayscale image sequences, we recognize actions in the frontal or lateral view. Input sequences captured from a CCD camera are matched against stored models of actions. The action that is found to be closest to the input sequence is identified. In the present implementation, these actions include sitting down, standing up, bending down, getting up, hugging, squatting, rising from a squatting position, bending sideways, falling backward and walking. This methodology finds application in environments where constant monitoring of human activity is required, such as in department stores and airports.
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