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Join Gabor and scattering transform for urine sediment particle texture analysis

机译:加入泌尿沉积物粒子纹理分析的Gabor和散射变换

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摘要

There are many kinds of corporeal ingredients in urinary sediment which must be identified to confirm the diagnosis of an abnormality. In this paper, we refine a method which integrates both Gabor filter and scattering transform for texture analysis in urinary sediment images. The proposed scheme is based on the conventional Gabor filter and the recently developed scattering transform. The Gabor filter bank has the ability to capture the filtering responses according to the scale and orientation of texture. Besides, the scattering transformation provides a distinctive property of robust description, which is invariant to rotations and stable to spatial deformation. The excellent representation of Gabor filter and scattering transform has been severally studied in recent work, yet they have not been used in urinary sediment images. In this work, we propose to use both Gabor filter and scattering transformation to extract the texture feature of urinary sediment images. Coupling with an efficient support vector machine (SVM) classifier, the proposed scheme tends to shown superiority as compared to other single descriptive alternatives in real urinary sediment experiments.
机译:尿泥沉积物中有许多物质成分必须识别,以确认异常的诊断。在本文中,我们优化了一种方法,该方法集成了Gabor滤波器和散射变换,以便在尿沉沉积物图像中进行纹理分析。所提出的方案基于传统的Gabor滤波器和最近发育的散射变换。 Gabor滤波器组能够根据纹理的比例捕获过滤响应。此外,散射变换提供了稳健描述的独特性,其不变于旋转和稳定的空间变形。在最近的工作中,在近期研究了Gabor过滤器和散射变换的优异代表,但它们尚未用于尿沉沉积物图像。在这项工作中,我们建议使用Gabor滤波器和散射变换来提取尿泥沉积物图像的纹理特征。与有效的支持向量机(SVM)分类器耦合,所提出的方案与实际尿沉渣实验中的其他单一描述性替代品相比,趋于显着的优势。

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