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Fall prediction based on key points of human bones

机译:基于人体骨骼关键点的秋季预测

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With the development of society, the number of old people is increasing. Slow response, osteoporosis and vision loss threaten the health of the elderly. The fall of this problem is an important factor that threatens the health of the elderly. In order to reduce the damage caused by falls, this paper based on the human skeleton map for fall prediction. First using OPENPOSE get the bone map and make it into a data set. Then using transfer learning to train the data set to get a new model Finally, the new model is used to predict the fall. The innovations in this paper are to take bone maps from 2D images and use bone maps to make fall predictions. The bone map is predicted using a convolutional neural network. The final experimental results show that the new model obtained through transfer learning has an accuracy rate of 91.7%. This result fully demonstrates the validity of the proposed model. (C) 2019 Elsevier B.V. All rights reserved.
机译:随着社会的发展,老年人的数量正在增加。 慢反应,骨质疏松症和视力损失威胁到老年人的健康。 这个问题的堕落是威胁老人健康的重要因素。 为了减少跌落造成的损害,本文基于人类骨骼图进行落下预测。 首先使用Opentospy获取骨骼映射并将其变为数据集。 然后使用转移学习训练数据集最后获得新模型,新模型用于预测跌倒。 本文的创新是从2D图像中取出骨头地图,并使用骨头图来进行堕落预测。 使用卷积神经网络预测骨头图。 最终的实验结果表明,通过转移学习获得的新模型的准确率为91.7%。 该结果充分展示了所提出的模型的有效性。 (c)2019 Elsevier B.v.保留所有权利。

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