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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

机译:支持向量机的跌倒识别方法是基于人体骨骼动作的简化表达并利用躯干角快速检测开始关键帧

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摘要

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.
机译:受测者承受的跌倒可能会造成严重后果,特别是对于独自一人的老年人。提出了一种基于Kinect传感器的室内跌倒检测方法,并分析了三维骨架关节信息。与最新方法相比,作者的方法有两个主要改进。首先,量化可能的跌倒活动,并由仅包含32个项目的一维浮点数组表示,然后使用支持向量机(SVM)进行跌倒识别。与典型的深度学习方法不同,其方法的输入参数大大减少。因此,视频可以以较低的时间成本通过SVM进行训练和识别。其次,导入躯干角度以检测可能跌倒的开始关键帧,这比使用滑动窗口要有效得多。他们的方法在电信系统团队(TST)跌倒检测数据集v2中进行了评估。结果表明,他们的方法达到了92.05%的精度,优于其他典型方法。根据机器学习的特点,当引入更多样本时,期望他们的方法能够实现更高的准确性和更强的跌倒识别能力。由于其时间效率和鲁棒性,它可以用于实时视频监视。

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