FPGA implementation of hand gesture recognition system using neural networks

K. Sridevi, M. Sundarambal, K. Muralidharan, R. Josephine
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引用次数: 9

Abstract

Gesture recognition enables human to communicate with machine and interact naturally without any mechanical devices. The ultimate aim of gesture recognition system is to create a system which understands human gesture and use them to control various other devices. This research focuses on gesture recognition system with a radial basis function network. The radial basis function network is a 3 layer network and trained with a radial basis function algorithm to identify the classes. The complete system is implemented on a Field Programmable Gate Array with image processing unit. The system is design to identify 24 American sign-language hand signs and also real time hand gesture signs. This combination leads to maximum recognition rate. The proposed system is very small due to FPGA implementation which is highly suitable for control of equipments at home, by the handicapped people.
用FPGA实现的手势识别系统的神经网络
手势识别可以使人与机器进行自然的交流和互动,而不需要任何机械设备。手势识别系统的最终目的是创建一个能够理解人类手势并使用手势控制各种其他设备的系统。本文主要研究基于径向基函数网络的手势识别系统。径向基函数网络是一个3层的网络,用径向基函数算法进行训练来识别类。整个系统在带有图像处理单元的现场可编程门阵列上实现。该系统旨在识别24种美国手语手势和实时手势。这种组合可以获得最高的识别率。该系统采用FPGA实现,体积非常小,非常适合残疾人家庭设备的控制。
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