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Journal ArticleDOI

Support vector machine approach to fall recognition based on simplified expression of human skeleton action and fast detection of start key frame using torso angle

Weidong Min, +3 more
- 01 Dec 2018 - 
- Vol. 12, Iss: 8, pp 1133-1140
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TLDR
A fall detection method for indoor environments based on the Kinect sensor and analysis of three-dimensional skeleton joints information is proposed and can be used in real-time video surveillance because of its time efficiency and robustness.
Abstract
Falls sustained by subjects can have severe consequences, especially for elderly persons living alone. A fall detection method for indoor environments based on the Kinect sensor and analysis of three-dimensional skeleton joints information is proposed. Compared with state-of-the-art methods, the authors' method provides two major improvements. First, possible fall activity is quantified and represented by a one-dimensional float array with only 32 items, followed by fall recognition using a support vector machine (SVM). Unlike typical deep learning methods, the input parameters of their method are dramatically reduced. Hence, videos are trained and recognised by an SVM with a low time cost. Second, the torso angle is imported to detect the start key frame of a possible fall, which is much more efficient than using a sliding window. Their approach is evaluated on the telecommunication systems team (TST) fall detection dataset v2. The results show that their approach achieves an accuracy of 92.05%, better than other typical methods. According to the characters of machine learning, when more samples are imported, their method is expected to achieve a higher accuracy and stronger capability of fall-like discrimination. It can be used in real-time video surveillance because of its time efficiency and robustness.

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Citations
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Proceedings ArticleDOI

Human Activity Recognition: From Sensors to Applications

TL;DR: The existing sensory systems in HAR, including sensor-based, vision-based sensors, and multimodal solutions are summarized, and the recent advances in HAR algorithms are discussed.
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A fall detection method based on a joint motion map using double convolutional neural networks

TL;DR: This paper proposed a highly effective fall detection method based on a joint motion map using two parallel convolutional neural networks that achieved an accuracy of 97.35% on TST v2 and performed excellently in the fall discrimination capability test on UT-A3D.
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A data augmentation method for human action recognition using dense joint motion images

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References
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Fall detection from depth map video sequences

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