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Human Action Detection and Classification using Optimal Bag-of-Words Representation

机译:使用最优袋式表示的人类行动检测和分类

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Based on interest keypoints extracted as salient space-time volumes, human-action can be described as a "bag of visual words". This representation has been frequently used in the classification of image and video data. The representation choices regarding the dimension, selection, and weighting of visual words are crucial to the classification performance. In this paper, we address the problem of efficient human-action classification by selecting an optimal bag-of-words representing an action. We introduce genetic algorithm based SVM classifier which performs dimension reduction, features subset selection, Instance selection, visual words weighting and SVM parameter selection. The impact of this optimization to human-action classification is studied through extensive experiments on the TRECVID and CM U video collections.
机译:基于提取为突出时空卷的兴趣关键点,人类动作可以被描述为“视觉单词袋”。该表示经常用于图像和视频数据的分类。视觉词的维度,选择和加权的表示选择对于分类性能至关重要。在本文中,我们通过选择代表一个动作的最佳词语来解决有效的人类行动分类问题。我们引入基于遗传算法的SVM分类器,其执行尺寸减小,功能子集选择,实例选择,视觉单词加权和SVM参数选择。通过对Trecvid和CM U视频集合的广泛实验研究了这种优化对人类行动分类的影响。

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