Motion Prediction Using Depth Information of Human Arm Based on Alexnet

Jing Zhu, ShuoJin Li, Ruonan Ma, Jingwang Cheng
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Abstract

The development of convolutional neural networks(CNN) has provided a new tool to make classification and prediction of human's body motion. This project tends to predict the drop point of a ball thrown out by experimenters by classifying the motion of their body in the process of throwing. Kinect sensor v2 is used to record depth maps and the drop points are recorded by a square infrared induction module. Firstly, convolutional neural networks are made use of to put the data obtained from depth maps in and get the prediction of drop point according to experimenters' motion. Secondly, huge amount of data is used to train the networks of different structure, and a network structure that could provide high enough accuracy for drop point prediction is established. The network model and parameters are modified to improve the accuracy of the prediction algorithm. Finally, the experimental data is divided into a training group and a test group. The prediction results of test group reflect that the prediction algorithm effectively improves the accuracy of human motion perception.
基于Alexnet的人体手臂深度信息运动预测
卷积神经网络的发展为人体运动的分类和预测提供了一种新的工具。该项目倾向于通过对实验者投掷过程中身体的运动进行分类来预测实验者扔出的球的落点。Kinect传感器v2用于记录深度图,落点由方形红外感应模块记录。首先,利用卷积神经网络将从深度图中获得的数据放入其中,并根据实验者的运动得到下降点的预测。其次,利用大量的数据对不同结构的网络进行训练,建立了一种能够为落点预测提供足够高精度的网络结构。对网络模型和参数进行了修改,以提高预测算法的准确性。最后,将实验数据分为训练组和测试组。测试组的预测结果表明,该预测算法有效地提高了人体运动感知的准确性。
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