Selective Ensemble Learning based Human Action Recognition Using Fusing Visual Features

Chao Tang, R. Stolkin, Chun-ling Hu, Huosheng Hu, Xiaofeng Wang, L. Zou
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Abstract

The selection of motion feature directly affects the recognition effect of human action recognition method. Single feature is often affected by human appearance, environment, camera settings and other factors, and its recognition effect is limited. This paper propose a novel action recognition method by using selective ensemble learning, which is a special paradigm of ensemble learning. Moreover, this paper presents a fast and efficient action description feature and a novel recognition algorithm. Robust discriminant mixed features are learnt from behavioral video frames as behavioral descriptors, The recogniton algorithm using selective ensemble learning can achieve fast classification. Experimental results show that the proposed method achieves ideal recognition results on the self-built indoor behavior data set and public data set.
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基于选择性集成学习的融合视觉特征的人体动作识别
运动特征的选择直接影响人体动作识别方法的识别效果。单一特征往往受到人的外貌、环境、相机设置等因素的影响,其识别效果有限。本文提出了一种基于选择性集成学习的动作识别方法,这是集成学习的一种特殊范例。此外,本文还提出了一种快速有效的动作描述特征和一种新的识别算法。从行为视频帧中学习鲁棒的判别混合特征作为行为描述符,采用选择性集成学习的识别算法可以实现快速分类。实验结果表明,该方法在自建室内行为数据集和公共数据集上均取得了理想的识别效果。
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