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Evaluating a bag-of-visual features approach using spatio-temporal features for action recognition

机译:使用用于动作识别的时空特征来评估一种可视化特征方法

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摘要

The detection of the spatial-temporal interest points has a key role in human action recognition algorithms. This research work aims to exploit the existing strength of bag-of-visual features and presents a method for automatic action recognition in realistic and complex scenarios. This paper provides a better feature representation by combining the benefit of both a well-known feature detector and descriptor i.e. the 3D Harris space-time interest point detector and the 3D Scale-Invariant Feature Transform descriptor. Finally, action videos are represented using a histogram of visual features by following the traditional bag-of-visual feature approach. Apart from video representation, a support vector machine (SVM) classifier is used for training and testing. A large number of experiments show the effectiveness of our method on existing benchmark datasets and shows state-of-the-art performance. This article reports 68.1% mean Average Precision (mAP), 94% and 91.8% average accuracy for Hollywood-2, UCF Sports and KTH datasets respectively. (C) 2018 Elsevier Ltd. All rights reserved.
机译:空间时间兴趣点的检测在人类动作识别算法中具有关键作用。本研究工作旨在利用现有的视觉特征强度,并提出了一种在现实和复杂的场景中自动动作识别的方法。本文通过将众所周知的特征检测器和描述符的益处相结合,提供了更好的特征表示。3D HARRIS时空兴趣点检测器和3D比例不变特征变换描述符。最后,通过遵循传统的视觉特征方法,使用视觉特征的直方图表示操作视频。除了视频表示,支持向量机(SVM)分类器用于培训和测试。大量实验表明了我们对现有基准数据集的方法的有效性,并显示了最先进的性能。本文报告了68.1%的平均精度(地图),分别为好莱坞-2,UCF运动和kth数据集的平均精度为94%和91.8%。 (c)2018年elestvier有限公司保留所有权利。

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