基于纹理的视觉场所分类过滤器的叠加

Nur Nabilah Abu Mangshor, A. Abdullah
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引用次数: 0

摘要

近年来在计算机视觉领域的研究表明,将多个特征相结合是提高分类性能的有效方法。此外,使用在多个滤波器响应处对图像进行卷积的滤波器可以增加对图像的描述。过滤器的反应越独特,它就越能从其他群体中区分出特征。因此,本文提出了一种组合方法,将多个分类器在多个滤波器响应下的输出组合在一起,以增强视觉场所自动分类系统。此外,本研究的目标之一是探讨单一和专用组合滤波器响应分类器方法之间的性能差异。组合多个滤波器响应来描述图像的一个可能的问题是输入向量的维数变得非常大,这可能会增加过拟合问题并阻碍泛化性能。因此,使用支持向量机的叠加来从支持向量机第一层训练的每个滤波器响应描述符中计算正确的输出类。接下来,使用第二层支持向量机将所有训练好的第一层支持向量模型的这些类概率输出值组合起来,学习正确的输出类。我们使用Laws过滤器的25种不同的过滤器响应,对来自KTH-IDOL2数据集的五个不同类别的视觉位置进行了单个描述符的实验。结果表明,2层叠加算法优于单一滤波器响应输入向量和将所有滤波器响应输出直接组合在一个非常大的单一输入向量中的单一和朴素方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stacking of texture based filters for visual place categorization
Recent research in computer vision has shown that combining multiple features is an effective way to improve classification performance. Furthermore, the use of filters that convolve images at multiple filter responses can increase descriptions to images. The more distinctive the filter responses, the better it able to distinguish characteristics from other groups. Thus, this paper describes a combination method that combines multiple classifier outputs at several filter responses to enhance the automatic visual place categorization system. Besides, one of the goals of this study is to explore performance differences between single and dedicated combination of filter response classifier methods. One possible problem of combining multiple filter responses for describing images is that the input vector becomes very large in dimensionality, which can increase the problem of overfitting and hinder generalization performance. Therefore, the stacking of support vector machine is used to compute the right output class from each single descriptor of filter responses that has been trained at the first layer of support vector machine. Next, the second layer support vector machine is used to combine those class probability output values of all trained first layer support vector models to learn the right output class. We have performed experiments on five different categories of visual places from the KTH-IDOL2 dataset with a single descriptor using 25 different filter responses of Laws filters. Results showed that the 2-layer stacking algorithm outperform the single and naive approaches that uses single filter response input vector and combines all filter response outputs directly in a very large single input vector respectively.
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