Neural network based algorithm for hand gesture detection in a low-cost microprocessor applications

Tomasz Kocejko, Filip Brzezinski, A. Poliński, J. Rumiński, J. Wtorek
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引用次数: 2

Abstract

In this paper the simple architecture of neural network for hand gesture classification was presented. The network classifies the previously calculated parameters of EMG signals. The main goal of this project was to develop simple solution that is not computationally complex and can be implemented on microprocessors in low-cost 3D printed prosthetic arms. As the part of conducted research the data set EMG signals corresponding to 5 different gestures was created. The accuracy of elaborated solution was 90% when applied real time on data sampled with 1kHz frequency and 75% when applied real time on data acquired and process directly on microprocessor with lower,100Hz sampling frequency.
基于神经网络的手势检测算法在低成本微处理器上的应用
本文提出了一种简单的用于手势分类的神经网络结构。该网络对先前计算的肌电信号参数进行分类。该项目的主要目标是开发简单的解决方案,不需要计算复杂,可以在低成本3D打印假肢手臂的微处理器上实现。作为研究的一部分,我们创建了5种不同手势对应的肌电信号数据集。当以1kHz频率实时采样数据时,该方案的精度为90%,当以100Hz采样频率直接在微处理器上采集和处理数据时,该方案的实时精度为75%。
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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