Embedded Real-Time Fall Detection Using Deep Learning For Elderly Care
Lee, Hyunwoo, Kim, Jooyoung, Yang, Dojun, Kim, Joon-Ho
This paper proposes a real-time embedded fall detection system using a DVS(Dynamic Vision Sensor)(Berner et al. [2014]) that has never been used for traditional fall detection, a dataset for fall detection using that, and a DVS-TN(DVS-Temporal Network). The first contribution is building a DVS Falls Dataset, which made our network to recognize a much greater variety of falls than the existing datasets that existed before and solved privacy issues using the DVS. Secondly, we introduce the DVS-TN: optimized deep learning network to detect falls using DVS. Finally, we implemented a fall detection system which can run on low-computing H/W with real-time, and tested on DVS Falls Dataset that takes into account various falls situations. Our approach achieved 95.5% on the F1-score and operates at 31.25 FPS on NVIDIA Jetson TX1 board.
Nov-29-2017
- Country:
- North America > United States (0.29)
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- Research Report (0.64)
- Industry:
- Health & Medicine (1.00)
- Information Technology
- Security & Privacy (0.55)
- Hardware (0.35)
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