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Analysis of quantum noise-reducing filters on chest X-ray images: A review

机译:胸部X光图像上量子降噪滤波器分析:综述

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摘要

Radiography is one of the important clinical adjuncts for preliminary disease investigation. The X-ray images are corrupted with inherent quantum noise affecting the performance of computer-aided diagnosis systems. This paper presents an extensive experimental review and impact of six benchmark filters for reducing noise and disease classification on chest X-ray images. The tradeoff between de-noising and texture preserving performance is investigated through classification performances using the state-of-the-art machine learning methods - Support Vector Machine and Artificial Neural Network. Moreover, the qualitative, subjective, and statistical evaluation is performed by using the image quality metrics, expert radiologist opinion, and statistical test, respectively. The experimental results confirm the significant improvement in classification performance using Guided filtered images. Furthermore, the results of qualitative measures and subjective analysis demonstrate that the guided filter and anisotropic diffusion filter both performed significantly better. Finally, a non-parametric statistical test is used to validate statistical significance of the obtained results. (C) 2019 Elsevier Ltd. All rights reserved.
机译:射线照相是初步疾病调查的重要临床临床辅助之一。 X射线图像损坏,具有影响计算机辅助诊断系统性能的固有量子噪声。本文介绍了六个基准过滤器对胸部X射线图像上的噪声和疾病分类进行了广泛的实验回顾和影响。通过使用最先进的机器学习方法 - 支持向量机和人工神经网络,通过分类性能来研究取消通知和纹理性能之间的折衷。此外,通过使用图像质量指标,专家放射科医师意见和统计测试来进行定性,主观和统计评估。实验结果证实了使用引导滤波图像的分类性能的显着改善。此外,定性测量和主观分析结果表明,引导滤波器和各向异性扩散滤波器均明显更好。最后,使用非参数统计测试来验证所获得的结果的统计学意义。 (c)2019年elestvier有限公司保留所有权利。

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