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Recognition of human activities using SVM multi-class classifier

机译:使用SVM多分类器识别人类活动

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摘要

Even great efforts have been made for decades, the recognition of human activities is still an immature technology that attracted plenty of people in computer vision. In this paper, a system framework is presented to recognize multiple kinds of activities from videos by an SVM multi-class classifier with a binary tree architecture. The framework is composed of three functionally cascaded modules: (a) detecting and locating people by non-parameter background subtraction approach, (b) extracting various of features such as local ones from the minimum bounding boxes of human blobs in each frames and a newly defined global one, contour coding of the motion energy image (CCMEI), and (c) recognizing activities of people by SVM multi-class classifier whose structure is determined by a clustering process. The thought of hierarchical classification is introduced and multiple SVMs are aggregated to accomplish the recognition of actions. Each SVM in the multi-class classifier is trained separately to achieve its best classification performance by choosing proper features before they are aggregated. Experimental results both on a homebrewed activity data set and the public Schuldt's data set show the perfect identification performance and high robustness of the system.
机译:甚至几十年来都付出了巨大的努力,对人类活动的认识仍然是一种不成熟的技术,吸引了很多人使用计算机视觉。在本文中,提出了一种系统框架,该系统框架通过具有二叉树架构的SVM多分类器识别视频中的多种活动。该框架由三个功能级联的模块组成:(a)通过非参数背景减法检测和定位人员,(b)从每个帧中人类斑点的最小边界框中提取各种特征(例如局部特征),定义全局变量,运动能量图像的轮廓编码(CCMEI),以及(c)通过SVM多分类器识别人的活动,该分类器的结构由聚类过程确定。介绍了分层分类的思想,并聚合了多个SVM以完成对动作的识别。多类分类器中的每个SVM都经过单独训练,以通过在聚合之前选择适当的功能来实现其最佳分类性能。在自制活动数据集和公共Schuldt数据集上的实验结果均显示了该系统的完美识别性能和高度鲁棒性。

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