均衡显著性特征选择及其在分割中的应用

Davi P. Santos, João Batista Neto
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引用次数: 19

摘要

分割是计算机视觉的关键步骤,其中纹理的分割起着重要的作用。当涉及到基于纹理分割的建模解决方案时,存在大量可以计算纹理的方法有时是一个需要克服的障碍。鉴于自然视觉系统的优越性及其通用性,本研究采用了一种基于多层感知器神经网络突触连接显著性的特征选择方法。与传统方法不同,本文引入了一种均衡方案来显著性度量,这有助于显著改善最合适特征的选择,从而产生更好的分割。根据Jeffrey-Matusita距离准则,将该方法与穷举搜索进行了比较。自然场景图像的分割也提供了作为该方法的可能应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature selection with equalized salience measures and its application to segmentation
Segmentation is a crucial step in computer vision in which texture plays an important role. The existence of a large amount of methods from which texture can be computed is, sometimes, a hurdle to overcome when it comes to modeling solutions for texture-based segmentation. Following the excellence of the natural vision system and its generality, this work has adopted a feature selection method based on salience of synaptic connections of a Multilayer Perceptron neural network. Unlike traditional approaches, this paper introduces an equalization scheme to salience measures which contributed to significantly improve the selection of the most suitable features and, hence, yield better segmentation. The proposed method is compared with exhaustive search according to the Jeffrey-Matusita distance criterion. Segmentation for images of natural scenes has also been provided as a probable application of the method.
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