Liu Lina, Wang Kevin I-Kai, Tian Biao, Abdulla Waleed H, Gao Mingliang, Jeon Gwanggil
College of Electrical and Electronic Engineering, Shandong University of Technology, Zibo 255000, China.
Department of Electrical, Computer, and Software Engineering, Faculty of Engineering, The University of Auckland, 20 Symonds St, Auckland 1010, New Zealand.
Sensors (Basel). 2023 May 29;23(11):5179. doi: 10.3390/s23115179.
Human behavior recognition technology is widely adopted in intelligent surveillance, human-machine interaction, video retrieval, and ambient intelligence applications. To achieve efficient and accurate human behavior recognition, a unique approach based on the hierarchical patches descriptor (HPD) and approximate locality-constrained linear coding (ALLC) algorithm is proposed. The HPD is a detailed local feature description, and ALLC is a fast coding method, which makes it more computationally efficient than some competitive feature-coding methods. Firstly, energy image species were calculated to describe human behavior in a global manner. Secondly, an HPD was constructed to describe human behaviors in detail through the spatial pyramid matching method. Finally, ALLC was employed to encode the patches of each level, and a feature coding with good structural characteristics and local sparsity smoothness was obtained for recognition. The recognition experimental results on both Weizmann and DHA datasets demonstrated that the accuracy of five energy image species combined with HPD and ALLC was relatively high, scoring 100% in motion history image (MHI), 98.77% in motion energy image (MEI), 93.28% in average motion energy image (AMEI), 94.68% in enhanced motion energy image (EMEI), and 95.62% in motion entropy image (MEnI).
人类行为识别技术在智能监控、人机交互、视频检索和环境智能应用中得到了广泛应用。为了实现高效准确的人类行为识别,提出了一种基于分层补丁描述符(HPD)和近似局部约束线性编码(ALLC)算法的独特方法。HPD是一种详细的局部特征描述,ALLC是一种快速编码方法,这使得它在计算上比一些有竞争力的特征编码方法更高效。首先,计算能量图像种类以全局方式描述人类行为。其次,通过空间金字塔匹配方法构建HPD以详细描述人类行为。最后,采用ALLC对每个级别的补丁进行编码,得到具有良好结构特征和局部稀疏平滑性的特征编码用于识别。在Weizmann和DHA数据集上的识别实验结果表明,结合HPD和ALLC的五种能量图像种类的准确率相对较高,运动历史图像(MHI)得分100%,运动能量图像(MEI)得分98.77%,平均运动能量图像(AMEI)得分93.28%,增强运动能量图像(EMEI)得分94.68%,运动熵图像(MEnI)得分95.62%。