Pre-processing of Multimodal MR Images using NLM and Histogram Equalization

Sujata Tukaram Bhairnallykar, Dr. Vaibhav Eknath Narawade
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引用次数: 1

Abstract

Magnetic resonance imaging has emerged as one of the maxima broadly used and flexible scientific imaging modalities today. While at the beginning of this technique the research was fundamentally qualitative and relied exclusively on observation of images, currently several technological developments have driven it possible to derive quantitative measurements from these data. However, MR images are normally affected by several types of artifacts which must be minimized before a quantitative biomarker assessment pipeline is applied. This paper proposes preprocessing to the magnetic resonance (MR) images to enhance the standard of the image and to ease the next processing and analysis. The proposed method uses Non-Local Means (NLM) for noise removal and Histogram Equalization (HE) for enhancing the contrast of Magnetic resonance images for the preprocessing.
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基于NLM和直方图均衡化的多模态磁共振图像预处理
磁共振成像已成为当今应用最广泛、最灵活的科学成像方式之一。虽然在这项技术开始的时候,研究基本上是定性的,完全依赖于对图像的观察,但目前一些技术的发展已经使得从这些数据中获得定量测量成为可能。然而,MR图像通常受到几种类型的伪影的影响,这些伪影必须在应用定量生物标志物评估管道之前最小化。本文提出了对磁共振图像进行预处理的方法,以提高图像的质量,便于后续的处理和分析。该方法采用非局部均值(NLM)去噪,直方图均衡化(HE)增强磁共振图像的对比度进行预处理。
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