Multi-layer perceptron mapping on a SIMD architecture

S. Vitabile, A. Gentile, G. B. Dammone, F. Sorbello
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引用次数: 18

Abstract

An automatic road sign recognition system, A(RS)/sup 2/, is aimed at the detection and recognition of one or more road signs from real-world color images. The authors have proposed an A(RS)/sup 2/ able to detect and extract sign regions from real world scenes on the basis of their color and shape features. Classification is then performed on extracted candidate regions using multi-layer perceptron neural networks. Although system performances are good in terms of both sign detection and classification rates, the entire process requires a large computational time, so real-time applications are not allowed. We present the implementation of the neural layer on the Georgia Institute of Technology SIMD (single instruction, multiple data) pixel processor. Experimental trials supporting the feasibility of real-time processing on this platform are also reported.
基于SIMD架构的多层感知器映射
一个自动道路标志识别系统,A(RS)/sup 2/,旨在从现实世界的彩色图像中检测和识别一个或多个道路标志。作者提出了一种基于颜色和形状特征从真实场景中检测和提取符号区域的A(RS)/sup /。然后使用多层感知器神经网络对提取的候选区域进行分类。虽然系统的性能在标识检测和分类率方面都很好,但整个过程需要大量的计算时间,因此不允许实时应用。我们提出了神经层在乔治亚理工学院SIMD(单指令,多数据)像素处理器上的实现。实验证明了该平台实时处理的可行性。
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