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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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Intelligent video surveillance: a review through deep learning techniques for crowd analysis

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Research of Fall Detection and Fall Prevention Technologies: A Systematic Review

TL;DR: A global taxonomy for current fall-related studies from four aspects, including current literature reviews, fall detection, and prevention systems based on different sensor apparatus and analytic algorithm, low power techniques, and sensor placements for fall- related systems are conducted.
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Elderly Fall Detection Systems: A Literature Survey

TL;DR: The survey is meant to provide researchers in the field of elderly fall detection using sensor networks with a summary of progress achieved up to date and to identify areas where further effort would be beneficial.
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Comprehensive review of vision-based fall detection systems

TL;DR: A comprehensive revision of all published articles in the main scientific databases regarding this area during the last five years has been made to determine the course of its evolution and help new researchers.
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A Two-Stream Approach to Fall Detection With MobileVGG

TL;DR: The experimental results show that the proposed two-stream lightweight fall classification model outperforms the existing methods in distinguishing falls from similar daily activities such as lying and reducing the occupied memory, therefore, it is suitable for mobile devices.
References
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Journal ArticleDOI

Continuous human action recognition in real time

TL;DR: A novel and efficient continuous action recognition framework is proposed based on the bag of words representation, which is effective and efficient to recognize both isolated actions and continuous actions.
Journal ArticleDOI

A Novel Real-Time Fall Detection System Based on Real-Time Video and Mobile Phones

TL;DR: A novel fall detection scheme and a health-care system to detect falls of the elderly based on a real-time video surveillance system and a smart phone and performs better than other state-of-the-art fall detection systems.
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