Preprocessing techniques based on LBP and Gabor filters for clothing classification

S. Thewsuwan, K. Horio
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引用次数: 2

Abstract

This paper presents preprocessing techniques for clothing classification system which are based on local binary pattern (LBP) and Gabor filters. Clothing are non-rigid and deformable objects that are very difficult for classification even human. Finding the appropriate features are one of the important issues for classification and remain challenges. LBP-based and Gabor-based methods are adopting to preprocessing for generating the beneficial information, including to analyze the properties of clothing. There are four preprocessing output images that generated before feature extraction. These images are LBP-based image, maximum magnitude image and combined information between maximum magnitude and gray scale image by division and subtraction operators. In the experiments, we extracted and analyzed feature properties by comparing between preprocessing and non-preprocessing images. Entropy, uniformity and LBP are applied to feature extraction system. By using the preprocessing techniques, the appropriate features have been extracted. The experimental results show that the preprocessing techniques can improve the performance of classification.
基于LBP和Gabor滤波器的服装分类预处理技术
提出了基于局部二值模式和Gabor滤波器的服装分类系统预处理技术。衣服是非刚性和可变形的物体,即使是人类也很难分类。找到合适的特征是分类的重要问题之一,也是一个挑战。采用基于lbp和gabor的预处理方法生成有益的信息,包括分析服装的性能。在特征提取之前,有四张预处理输出图像。这些图像是基于lbp的图像、最大星等图像以及通过除法和减法算子将最大星等与灰度图像的信息组合在一起。在实验中,我们通过对比预处理和未预处理的图像提取和分析特征属性。将熵、均匀性和LBP应用于特征提取系统。通过预处理技术,提取出相应的特征。实验结果表明,预处理技术可以提高分类性能。
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