多分辨率w算子设计的最大似然方法

D. Vaquero, J. Barrera, R. Hirata
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引用次数: 9

摘要

从一组大窗口的输入/输出示例中设计w算子是一个难题。从统计学的角度来看,由于需要大量的例子来获得对联合分布的良好估计,因此很难。从计算的角度来看,随着示例数量的增长,内存和时间需求可能会达到无法设计算子的程度。介绍了w算子设计中的一种联合分布估计技术。该分布由多分辨率金字塔结构表示,并提出了平均条件熵作为选择不同金字塔引起的分布的标准。给出了针对手写体数字分类问题设计的最大似然分类器的实验结果。分析表明,该技术从理论角度来看是有趣的,具有应用于计算机视觉和图像处理问题的潜力。
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A Maximum-Likelihood Approach for Multiresolution W-Operator Design
The design of W-operators from a set of input/output examples for large windows is a hard problem. From the statistical standpoint, it is hard because of the large number of examples necessary to obtain a good estimate of the joint distribution. From the computational standpoint, as the number of examples grows memory and time requirements can reach a point where it is not feasible to design the operator. This paper introduces a technique for joint distribution estimation in W-operator design. The distribution is represented by a multiresolution pyramidal structure and the mean conditional entropy is proposed as a criterion to choose between distributions induced by different pyramids. Experimental results are presented for maximum-likelihood classifiers designed for the problem of handwritten digits classification. The analysis shows that the technique is interesting from the theoretical point of view and has potential to be applied in computer vision and image processing problems.
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