Reed S, Coupland J
Appl Opt. 2001 Aug 10;40(23):3843-9. doi: 10.1364/ao.40.003843.
We study a cascade of linear shift-invariant processing modules (correlators), each augmented with a nonlinear threshold as a means to increase the performance of high-speed optical pattern recognition. This configuration is a special class of multilayer, feed-forward neural networks and has been proposed in the literature as a relatively fast best-guess classifier. However, it seems that, although cascaded correlation has been proposed in a number of specific pattern recognition problems, the importance of the configuration has been largely overlooked. We prove that the cascaded architecture is the exact structure that must be adopted if a multilayer feed-forward neural network is trained to produce a shift-invariant output. In contrast with more generalized multilayer networks, the approach is easily implemented in practice with optical techniques and is therefore ideally suited to the high-speed analysis of large images. We have trained a digital model of the system using a modified backpropagation algorithm with optimization using simulated annealing techniques. The resulting cascade has been applied to a defect recognition problem in the canning industry as a benchmark for comparison against a standard linear correlation filter, the minimum average correlation energy (MACE) filter. We show that the nonlinear performance of the cascade is a significant improvement over that of the linear MACE filter in this case.
我们研究了一系列线性平移不变处理模块(相关器),每个模块都增加了一个非线性阈值,以此来提高高速光学模式识别的性能。这种配置是多层前馈神经网络的一种特殊类型,并且在文献中已被提议作为一种相对快速的最佳猜测分类器。然而,尽管在许多特定的模式识别问题中都提出了级联相关,但这种配置的重要性似乎在很大程度上被忽视了。我们证明,如果训练多层前馈神经网络以产生平移不变输出,那么级联架构就是必须采用的精确结构。与更通用的多层网络相比,该方法在实践中很容易通过光学技术实现,因此非常适合对大图像进行高速分析。我们使用一种改进的反向传播算法并结合模拟退火技术进行优化,训练了该系统的数字模型。所得的级联已应用于罐头工业中的缺陷识别问题,作为与标准线性相关滤波器——最小平均相关能量(MACE)滤波器进行比较的基准。我们表明,在这种情况下,级联的非线性性能比线性MACE滤波器有显著提高。