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Fall Detection Method Based on Pose Estimation Using GRU

机译:基于GRU的姿势估计的秋季检测方法

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摘要

Falls are a major cause of injuries or deaths in the elderly over the age of 65 and a factor in social costs. Various detection techniques have been introduced, but the existing sensor base fall detector devices are still ineffective due to user inconvenience, response time, and limited hardware resources. However, since RNN (Recurrent Neural Network) provides excellent accuracy in the problem of analyzing sequential inputs, this paper proposes a fall detection method based on the skeleton data obtained from 2D RGB CCTV cameras. In particular, we proposed a feature extraction and classification method to improve the accuracy of fall detection using GRU. Experiments were conducted through public datasets (SDUFall) to find feature-extraction methods that can achieve high classification accuracy. As a result of various experiments to find a feature extraction method that can achieve high classification accuracy, the proposed method is more effective in detecting falls than unprocessed raw skeletal data which are not processed anything.
机译:跌倒是65岁以上老年人受伤或死亡的主要原因,以及社会成本的一个因素。已经介绍了各种检测技术,但由于用户不便,响应时间和有限的硬件资源,现有传感器基础偏移检测器装置仍然无效。然而,由于RNN(经常性神经网络)在分析顺序输入的问题中提供了优异的准确性,因此本文提出了一种基于从2D RGB CCTV摄像机获得的骨架数据的落后检测方法。特别地,我们提出了一种特征提取和分类方法,以提高使用GRU的崩解检测精度。通过公共数据集(SDufall)进行实验,以找到可以实现高分类精度的特征提取方法。由于各种实验来找到可以实现高分类精度的特征提取方法,所提出的方法在检测到未加工的未加工的未加工原始骨架数据方面更有效。

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