一种鲁棒混合模糊医学图像融合方法设计

M. Koohi, Behzad Moshiri, Abbas Shakery
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引用次数: 0

摘要

在当今时代,医学图像处理是医学领域许多应用和实践中不可缺少的一部分。所使用的图像应该符合一定的标准,包括比单个图像具有更准确的细节和信息,这可以帮助医学科学家进行分析和治疗。医学图像融合是提供高质量图像的技术之一,它是由不同的模式组合而成的。多模态医学图像融合可以显著提高融合图像的质量。本文提出了一种基于局部特征和模糊逻辑的磁共振成像(MRI)和计算机断层扫描(CT)图像融合方法。该技术的目的是创造MRI和CT图像中存在的有用信息的最大组合。识别图像的局部特征,并结合模糊逻辑计算每个像素的权重。仿真结果表明,与现有的方法相比,该方法的效果要好得多。该方法还用于检测和突出肿瘤区域,然后使用形态学滤波器消除任何噪声和干扰。
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Design of a Robust Hybrid Fuzzy Method for Medical Image Fusion
In this modern era, medical image processing is an indispensable part of many applications and practices in the medical domain. The images that are used should meet certain criteria, including having more accurate details and information than each individual image, which can help medical scientists with analysis and treatment. Medical image fusion is among the techniques that offer high-quality images, which are combined from different modalities. Multimodal medical image fusion provides remarkable improvement in the quality of the fused images. In this paper, we describe an image fusion method for magnetic resonance imaging (MRI) and computed tomography (CT) utilizing local features and fuzzy logic methods. The aim of the proposed technique is to create the maximum combination of useful information present in MRI and CT images. Image local features are distinguished and combined with fuzzy logic to calculate weights for each pixel. Simulation outcomes show that the proposed method produces considerably better results compared to cutting-edge techniques. The method is also used to detect and highlight tumorous areas, followed by morphology filters used to eliminate any noise and disturbance.
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