Multilayer backpropagation network for flexible circuit recognition

P. N. Suganthan, E. Teoh, D. Mital
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引用次数: 6

Abstract

This paper presents an industrial application of the multilayer backpropagation neural network with a modified learning rule, in recognizing transparent flexible membrane printed circuits independent of the position, orientation and scale. We give a new learning algorithm which reduces the complexity of the multilayer backpropagation network by pruning insignificant weights and chooses the best size to suit the underlying complexity of the recognition problem. This new learning algorithm is also compared with other network redundancy reduction techniques and tested on 3-bit parity problem. In this particular application, moment invariant features were chosen to train the multilayer backpropagation network. As the circuits have regular shape with a limited number of corners, a fast corner based moment invariance estimation algorithm is employed. This algorithm is almost hundred times faster than standard occupancy array based algorithm for shapes with a small number of corners.<>
柔性电路识别的多层反向传播网络
本文提出了一种基于改进学习规则的多层反向传播神经网络在独立于位置、方向和尺度的透明柔性膜印刷电路识别中的工业应用。本文提出了一种新的学习算法,该算法通过修剪无关紧要的权值来降低多层反向传播网络的复杂度,并选择最适合识别问题底层复杂度的最佳大小。并将该学习算法与其他网络冗余削减技术进行了比较,并在3位奇偶校验问题上进行了测试。在这个特殊的应用中,选择矩不变特征来训练多层反向传播网络。由于电路形状规则,且弯角数有限,因此采用了快速的基于弯角的矩不变性估计算法。对于角数较少的形状,该算法比基于占用数组的标准算法快近百倍。
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