Sensor Network Oriented Human Motion Segmentation With Motion Change Measurement | IEEE Journals & Magazine | IEEE Xplore

Sensor Network Oriented Human Motion Segmentation With Motion Change Measurement


Framework for Human Motion Sequence Segmentation based on Hashing in Sensor Network Environment.

Abstract:

Smart Internet of Things has greatly improved the quality of human life with increasingly intelligent sensor networks. Efficient and accurate human motion time series seg...Show More
Topic: Intelligent Systems for the Internet of Things

Abstract:

Smart Internet of Things has greatly improved the quality of human life with increasingly intelligent sensor networks. Efficient and accurate human motion time series segmentation is the key issue in human motion analysis and understanding. To realize human motion sequence segmentation, a comprehensive human motion description and an intelligent segmentation algorithm are required. Hence, this paper proposes a sensor network-based human motion sequence segmentation framework. With the facilitation of sensor network and sensor network-based feature fusion method, human motions can be comprehensively described. Based on the comprehensive description of motion data, a new motion change variation-based segmentation method is proposed to realize human motion sequence segmentation. Moreover, to satisfy the time efficiency demand in the applications of large scale sensor networks, a hashing algorithm is introduced to compress the original captured sensor data, which can effectively represent the human motions with short binary codes and facilitate the motion change measurement. Experiments on real-world human motion data sets validate the effectiveness of our proposed sensor network-based human motion sequence segmentation framework compared with other state-of-the-art human motion segmentation methods.
Topic: Intelligent Systems for the Internet of Things
Framework for Human Motion Sequence Segmentation based on Hashing in Sensor Network Environment.
Published in: IEEE Access ( Volume: 6)
Page(s): 9281 - 9291
Date of Publication: 27 December 2017
Electronic ISSN: 2169-3536

Funding Agency:


References

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