Image recognition using a neural network

Ken-Chung Ho, Bin-Chang Chieu
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Abstract

A new type of feedforward neural network for recognition of MRF (Markov random field) images is presented. The proposed forward and backward networks are essentially generalizations of the forward and backward procedures in backpropagation training for general feedforward networks. Due to the feedforward structure of the networks, they are recurrent for homogeneous MRF images and easy to implement. Because of the use of the maximum-likelihood criterion, this approach always performs well if all classes of images are equally likely. Basically, the proposed approach takes advantage of the feedforward neural networks and, by the joint probability, solves two basic problems in MRF modeling: how to measure a Gibbs distribution and how to estimate the Gibbs parameters from clean and noisy MRF samples.<>
使用神经网络的图像识别
提出了一种新的用于马尔可夫随机场图像识别的前馈神经网络。所提出的前向和后向网络本质上是对一般前馈网络反向传播训练中的前向和后向过程的推广。由于网络的前馈结构,它们对于均匀的MRF图像是循环的,并且易于实现。由于使用了最大似然准则,如果所有类别的图像都是等可能的,这种方法总是表现良好。基本上,该方法利用前馈神经网络,通过联合概率,解决了MRF建模中的两个基本问题:如何测量吉布斯分布和如何从干净和有噪声的MRF样本中估计吉布斯参数
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