Jalal Ahmad, Kamal Shaharyar, Kim Daijin
Department of Computer Science and Engineering, POSTECH, Pohang 790-784, Korea.
Department of Electronics and Radio Engineering, Kyung Hee University, Yongin-si 446-701, Korea.
Sensors (Basel). 2014 Jul 2;14(7):11735-59. doi: 10.3390/s140711735.
Recent advancements in depth video sensors technologies have made human activity recognition (HAR) realizable for elderly monitoring applications. Although conventional HAR utilizes RGB video sensors, HAR could be greatly improved with depth video sensors which produce depth or distance information. In this paper, a depth-based life logging HAR system is designed to recognize the daily activities of elderly people and turn these environments into an intelligent living space. Initially, a depth imaging sensor is used to capture depth silhouettes. Based on these silhouettes, human skeletons with joint information are produced which are further used for activity recognition and generating their life logs. The life-logging system is divided into two processes. Firstly, the training system includes data collection using a depth camera, feature extraction and training for each activity via Hidden Markov Models. Secondly, after training, the recognition engine starts to recognize the learned activities and produces life logs. The system was evaluated using life logging features against principal component and independent component features and achieved satisfactory recognition rates against the conventional approaches. Experiments conducted on the smart indoor activity datasets and the MSRDailyActivity3D dataset show promising results. The proposed system is directly applicable to any elderly monitoring system, such as monitoring healthcare problems for elderly people, or examining the indoor activities of people at home, office or hospital.
深度视频传感器技术的最新进展已使人类活动识别(HAR)在老年人监测应用中得以实现。尽管传统的HAR利用RGB视频传感器,但使用能产生深度或距离信息的深度视频传感器可极大地改进HAR。本文设计了一种基于深度的生活记录HAR系统,用于识别老年人的日常活动,并将这些环境转变为智能生活空间。最初,使用深度成像传感器捕获深度轮廓。基于这些轮廓,生成带有关节信息的人体骨骼,这些骨骼进一步用于活动识别并生成他们的生活记录。生活记录系统分为两个过程。首先,训练系统包括使用深度相机进行数据收集、特征提取以及通过隐马尔可夫模型对每个活动进行训练。其次,训练后,识别引擎开始识别所学活动并生成生活记录。使用生活记录特征针对主成分和独立成分特征对该系统进行了评估,相对于传统方法取得了令人满意的识别率。在智能室内活动数据集和MSRDailyActivity3D数据集上进行的实验显示出了有前景的结果。所提出的系统可直接应用于任何老年人监测系统,例如监测老年人的健康问题,或检查人们在家中、办公室或医院的室内活动。