Research of Gesture Recognition Algorithm Based on Acceleration Trajectory Image

Yaling Zhu, Gang Zheng, Xiangwei Li
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Abstract

According to the characteristics of neural network computing, this paper designs a neural network based on acceleration for gesture detection. First, the acceleration information is collected by using the acceleration sensor to extract the key point information, and convert the effective data into the acceleration track image data. Two neural networks with depth distribution of 50 and 101 are built and trained by ResNet algorithm. Matching image data features to obtain models with accuracy rates of 85% and 91% respectively, so as to achieve higher gesture recognition accuracy with less computational time and storage space complexity.
基于加速度轨迹图像的手势识别算法研究
根据神经网络计算的特点,设计了一种基于加速度的神经网络用于手势检测。首先,利用加速度传感器采集加速度信息,提取关键点信息,并将有效数据转换为加速度轨迹图像数据;利用ResNet算法建立深度分布为50和101的两个神经网络,并对其进行训练。匹配图像数据特征,获得准确率分别为85%和91%的模型,以更少的计算时间和存储空间复杂度实现更高的手势识别准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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