基于组合卷积的分层特征识别算法

Zhao Shuduo, Han Xu, Jin Xu, Haiyun Chen, Feng Guanqin, Ma Chenxin, Zhou Wenhao
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引用次数: 0

摘要

近年来,深度学习算法逐渐被人们所理解和接受。它需要太多的样本来训练。自从深度学习算法实现以来,过去的经典算法似乎变得黯淡起来。本文结合已有的经典模式识别算法,对卷积算法进行外推,得到了一种智能模式识别模型。这个新模型基于单个常规样本,其先进的泛化能力远远超过深度学习算法。在MNIST、QMNIST、CMU PIE和Extended Yale B数据库上的实验结果表明,该模型优于相关方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Layered Feature Recognition Algorithm Based on Combined Convolution
In recent years, the deep learning algorithms were gradually understood and accepted. It needs to take too many samples to train. Since the implementation of deep learning algorithm, it seems that the past classical algorithms have become gloomy. In this paper, we get an intelligent pattern recognition model by combining some classical algorithms in the past and extrapolating the convolution algorithm. This new model is based on a single regular sample, with its advanced generalization capabilities far beyond those of deep learning algorithms. Experimental results on MNIST, QMNIST, CMU PIE and Extended Yale B databases indicate that the proposed model is better than the related methods as compared with.
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