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Fall detection for elderly person care in a vision-based home surveillance environment using a monocular camera

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Abstract

Fall detection is one of the most important health care issues for elderly people at home, which can lead to severe injuries. With the advances and conveniences in computer vision in the last few decades, computer vision-based methods provide a promising way for detecting falls. In this paper, we propose a novel vision-based fall detection method for monitoring elderly people in house care environment. The foreground human silhouette is extracted via background modeling and tracked throughout the video sequence. The human body is represented with ellipse fitting, and the silhouette motion is modeled by an integrated normalized motion energy image computed over a short-term video sequence. Then, the shape deformation quantified from the fitted silhouettes is used as the features to distinguish different postures of the human. Finally, different postures are classified via a multi-class support vector machine and a context-free grammar-based method that provides longer range temporal constraints can verify the detected falls. Extensive experiments show that the proposed method has achieved a reliable result compared with other common methods.

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Acknowledgments

This research is supported by the “Strategic Priority Research Program - Network Video Communication and Control” of the Chinese Academy of Science (Grant No. XDA06030900).

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Correspondence to Weiguo Feng.

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Feng, W., Liu, R. & Zhu, M. Fall detection for elderly person care in a vision-based home surveillance environment using a monocular camera. SIViP 8, 1129–1138 (2014). https://doi.org/10.1007/s11760-014-0645-4

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  • DOI: https://doi.org/10.1007/s11760-014-0645-4

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