基于多特征和嵌入式隐马尔可夫模型的深度视频人体检测和活动识别

A. Jalal, S. Kamal, Daijin Kim
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引用次数: 90

摘要

越来越多独立生活的老年人需要以保健监测系统的形式提供特别照顾。深度视频技术的最新进展使人类活动识别(HAR)在老年医疗保健应用中成为可能。本文提出了一种基于深度视频的HAR识别新方法,该方法利用鲁棒多特征和嵌入式隐马尔可夫模型(hmm)来识别智能家居等室内环境中独居老年人的日常生活活动。在本文提出的HAR框架中,首先采用时间运动识别方法对深度图进行分析,从噪声背景中分割出人体轮廓,并计算每个活动的深度轮廓面积,以跟踪场景中的人体运动。将不变性、多视点分异和身体关节时空特征等具有代表性的特征融合在一起,探索特定身体部位的梯度方向变化、强度分异、时间变化和局部运动。然后,通过各自类的动态处理这些特征,并使用具有活动特征值的特定嵌入式HMM进行学习、建模、训练和识别。此外,我们通过深度传感器构建了一个新的在线人类活动数据集来评估所提出的特征。我们在三个深度数据集上的实验表明,所提出的多特征在人类行为和活动识别方面的有效性和鲁棒性优于目前最先进的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Depth Video-based Human Detection and Activity Recognition using Multi-features and Embedded Hidden Markov Models for Health Care Monitoring Systems
Increase in number of elderly people who are living independently needs especial care in the form of healthcare monitoring systems. Recent advancements in depth video technologies have made human activity recognition (HAR) realizable for elderly healthcare applications. In this paper, a depth video-based novel method for HAR is presented using robust multi-features and embedded Hidden Markov Models (HMMs) to recognize daily life activities of elderly people living alone in indoor environment such as smart homes. In the proposed HAR framework, initially, depth maps are analyzed by temporal motion identification method to segment human silhouettes from noisy background and compute depth silhouette area for each activity to track human movements in a scene. Several representative features, including invariant, multi-view differentiation and spatiotemporal body joints features were fused together to explore gradient orientation change, intensity differentiation, temporal variation and local motion of specific body parts. Then, these features are processed by the dynamics of their respective class and learned, modeled, trained and recognized with specific embedded HMM having active feature values. Furthermore, we construct a new online human activity dataset by a depth sensor to evaluate the proposed features. Our experiments on three depth datasets demonstrated that the proposed multi-features are efficient and robust over the state of the art features for human action and activity recognition.
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