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Comparison of wavelet families for texture classification by using wavelet packet entropy adaptive network based fuzzy inference system

机译:基于小波包熵自适应网络的模糊推理系统的小波族纹理分类比较

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摘要

Recently, significant of the robust texture image classification has increased. The texture image classification is used for many areas such as medicine image processing, radar image processing, etc. In this study, a new method for invariant pixel regions texture image classification is presented. Wavelet packet entropy adaptive network based fuzzy inference system (WPEANFIS) was developed for classification of the twenty 512 × 512 texture images obtained from Brodatz image album. There, sixty 32 × 32 image regions were randomly selected (overlapping or non-overlapping) from each of these 20 images. Thirty of these image regions and other 30 of these image regions are used for training and testing processing of the WPEANFIS, respectively. In this application study, Daubechies, biorthogonal, coiflets, and symlets wavelet families were used for wavelet packet transform part of the WPEANFIS algorithm, respectively. In this way, effects to correct texture classification performance of these wavelet families were compared. Efficiency of WPEANFIS developed method was tested and a mean %93.12 recognition success was obtained.
机译:近来,鲁棒纹理图像分类的重要意义已经增加。纹理图像分类被用于医学图像处理,雷达图像处理等许多领域。在这项研究中,提出了一种不变像素区域纹理图像分类的新方法。开发了基于小波包熵自适应网络的模糊推理系统(WPEANFIS),用于对从Brodatz相册获得的20张512×512纹理图像进行分类。在那里,从这20张图像中的每张中随机选择了60个32×32图像区域(重叠或不重叠)。这些图像区域中的30个以及这些图像区域中的其他30个分别用于WPEANFIS的训练和测试处理。在本应用研究中,分别将Daubechies,双正交,coiflet和symlets小波族用于WPEANFIS算法的小波包变换部分。这样,比较了校正这些小波族的纹理分类性能的效果。测试了WPEANFIS开发的方法的效率,并获得了平均%93.12的识别成功率。

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