基于累积变化梯度方向直方图的显著性导航动作识别

Hnin Mya Aye, Sai Maung Maung Zaw
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引用次数: 2

摘要

动作识别是近年来计算机视觉领域研究的一个热点。然而,由于背景杂波、光照变化、类内变化大以及噪声等因素的影响,这仍然是一项具有挑战性的任务。在本文中,我们的目标是通过使用显著性检测导航注意焦点(动作区域)并引入特征描述符,即累积变化梯度方向直方图(HACGO),开发一种动作识别方法。我们首先通过计算模式和颜色的清晰度来检测每个视频帧的显著性,从而定位动作区域。然后,我们使用提出的hgo和现有的HOG和HOF特征描述符提取外观和运动特征。最后,采用多类支持向量机分类器对不同动作进行识别。实验是在标准的UCF Sports动作数据集上进行的。实验结果表明,我们的动作识别方法通过新的特征描述符组合获得了较高的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Histogram of Accumulated Changing Gradient Orientation (HACGO) for saliency navigated action recognition
Action recognition has been an active research area in computer vision community during the recent years. However, it is still a challenging task due to the difficulties mainly resulted from the background clutter, illumination changes, large intra-class variation and noise. In this paper, we aim to develop an action recognition approach by navigating focus of attention (action region) with saliency detection and introducing a feature descriptor, namely Histogram of Accumulated Changing Gradient Orientation (HACGO). We firstly detect saliency in each video frame by computing pattern and color distinctness to localize action region. Then, we extract appearance and motion features using proposed HACGO, and existing HOG and HOF feature descriptors. Finally, a multi-class SVM classifier is applied to recognize different actions. The experiments were conducted on the standard UCF Sports action dataset. As experimental results, our action recognition approach achieved high recognition accuracy with a new combination of feature descriptors.
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