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Multilayer Perceptrons Applied to Traffic Sign Recognition Tasks

机译:Multidayer Perceptrons应用于交通标志识别任务

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摘要

The work presented in this paper suggests a Traffic Sign Recognition (TSR) system whose core is based on a Multilayer Percep-tron (MLP). A pre-processing of the traffic sign image (blob) is applied before the core. This operation is made to reduce the redundancy contained in the blob, to reduce the computational cost of the core and to improve its performance. For comparison purposes, the performance of the a statistical method like the k-Nearest Neighbour (k-NN) is included. The number of hidden neurons of the MLP is studied to obtain the value that minimizes the total classification error rate. Once obtained the best network size, the results of the experiments with this parameter show that the MLP achieves a total error probability of 3.85%, which is almost the half of the best obtained with the k-NN.
机译:本文提出的工作表明,其核心基于多层Percep-tron(MLP)的交通标志识别(TSR)系统。在核心之前应用了交通标志图像(BLOB)的预处理。该操作是为了减少诸如BLOB中包含的冗余,以降低核心的计算成本并提高其性能。为了比较目的,包括像K-CORMATE邻(K-NN)这样的统计方法的性能。研究了MLP的隐藏神经元数,以获得最小化总分类误差率的值。一旦获得了最佳的网络尺寸,该参数的实验结果表明,MLP总误差概率为3.85%,这几乎是K-NN最佳的一半。

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