Analysis of scale variations of local features for accurate classification of Emphysema images

Musibau A. Ibrahim, R. Mukundan
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引用次数: 2

Abstract

The effectiveness of local or global features has recently attracted growing attention in the field of texture image classification and retrieval. The features of the local binary pattern (LBP) for instance, usually lack global spatial information while global descriptors would provide very little local information. This paper proposes two different descriptors to circumvent these shortcomings by providing more information to describe different textural structures of the Emphysema computed tomography (CT) images. The proposed LBP+Multi-fractal Images (LMI) and the rotational invariant LBP+Multi-fractal Images (RLMI) can provide more accurate classification results by using a hybrid concatenation of the local and global features. The experimental approaches are validated for different scales of Emphysema images during the classification process in order to determine the appropriate image size that could yield the maximum classification accuracy. The experimental results show that the descriptors extracted from the combined features considerably improve the performance of the classifiers. The results also indicate that the LMI descriptor outperforms the earlier approaches and demonstrate the discriminating power and robustness of the combined features for accurate classification of Emphysema CT images.
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局部特征尺度变化分析对肺气肿图像的准确分类
局部特征和全局特征的有效性近年来在纹理图像分类和检索领域受到越来越多的关注。例如,局部二进制模式(LBP)的特征通常缺乏全局空间信息,而全局描述符提供的局部信息很少。本文提出了两种不同的描述符,通过提供更多的信息来描述肺气肿计算机断层扫描(CT)图像的不同纹理结构,以避免这些缺点。本文提出的LBP+多重分形图像(LMI)和旋转不变LBP+多重分形图像(RLMI)通过局部特征和全局特征的混合拼接,可以提供更准确的分类结果。在分类过程中,对实验方法进行了不同尺度的肺气肿图像的验证,以确定能够产生最大分类精度的合适图像尺寸。实验结果表明,从组合特征中提取的描述子显著提高了分类器的性能。结果还表明,LMI描述符优于先前的方法,并证明了组合特征对肺气肿CT图像的准确分类的判别能力和鲁棒性。
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