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FDSR: A new fuzzy discriminative sparse representation method for medical image classification

机译:FDSR:一种用于医学图像分类的新模糊鉴别稀疏表示方法

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摘要

Recent developments in medical image analysis techniques make them essential tools in medical diagnosis. Medical imaging is always involved with different kinds of uncertainties. Managing these uncertainties has motivated extensive research on medical image classification methods, particularly for the past decade. Despite being a powerful classification tool, the sparse representation suffers from the lack of sufficient discrimination and robustness, which are required to manage the uncertainty and noisiness in medical image classification issues. It is tried to overcome this deficiency by introducing a new fuzzy discriminative robust sparse representation classifier, which benefits from the fuzzy terms in its optimization function of the dictionary learning process. In this work, we present a new medical image classification approach, fuzzy discriminative sparse representation (FDSR). The proposed fuzzy terms increase the inter-class representation difference and the intraclass representation similarity. Also, an adaptive fuzzy dictionary learning approach is used to learn dictionary atoms. FDSR is applied on Magnetic Resonance Images (MRI) from three medical image databases. The comprehensive experimental results clearly show that our approach outperforms its series of rival techniques in terms of accuracy, sensitivity, specificity, and convergence speed.
机译:医学图像分析技术的最新进程使其成为医学诊断的重要工具。医学成像始终涉及不同种类的不确定性。管理这些不确定性具有关于医学图像分类方法的广泛研究,特别是过去十年。尽管是一个强大的分类工具,但稀疏的表示缺乏足够的歧视和稳健性,这是在医学图像分类问题中管理不确定性和噪音所必需的。它试图通过引入新的模糊鉴别强大的稀疏表示分类来克服这种缺陷,这在其优化函数的模糊术语中的优化函数中的优化函数中的优化。在这项工作中,我们提出了一种新的医学图像分类方法,模糊鉴别稀疏表示(FDSR)。所提出的模糊术语增加了类间表示差和跨读数表示相似性。此外,使用自适应模糊字典学习方法来学习字典原子。 FDSR应用于来自三个医学图像数据库的磁共振图像(MRI)。全面的实验结果清楚地表明,我们的方法在准确性,敏感度,特异性和收敛速度方面优于其系列竞争技术。

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