Image processing techniques for the detection of brain tumours

Shakibaei Asli Barmak Honarvar, Jasmin Anaëlle
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Abstract

Introduction: This paper is centered around advancing brain image analysis through the introduction and evaluation of advanced methods. Methods: With the overarching goal of enhancing both image quality and disease classification accuracy, the paper sets out to address crucial aspects of modern medical imaging. The research's trajectory begins by laying a strong foundation through an in-depth exploration of the principles governing Magnetic Resonance Imaging (MRI) and Computed Tomography (CT). This understanding serves as a springboard for the subsequent phases, wherein image quality improvement takes center stage. Results: By employing cutting-edge image processing techniques, the research aims to reduce noise and enhance image clarity, thereby setting the stage for more reliable and precise analysis. The second phase involves segmentation, a pivotal step in brain image analysis. Various segmentation methods will be assessed to determine their efficacy in accurately identifying distinct brain structures. Finally, the paper delves into the realm of deep learning, particularly leveraging CNN, to classify brain images based on disease types. This sophisticated approach holds promise for refining disease identification accuracy by identifying nuanced patterns within the images. Conclusion: Overall, the research aspires to modernize and elevate the field of brain image analysis, ultimately contributing to improved medical diagnostics and insights.
检测脑肿瘤的图像处理技术
导言:本文的核心是通过引入和评估先进的方法来推进大脑图像分析。方法:本文以提高图像质量和疾病分类准确性为总体目标,致力于解决现代医学成像的关键问题。研究轨迹首先通过深入探讨磁共振成像(MRI)和计算机断层扫描(CT)的原理奠定坚实的基础。这种理解是后续阶段的跳板,而图像质量的提高则是后续阶段的核心。成果:通过采用最先进的图像处理技术,该研究旨在减少噪音,提高图像清晰度,从而为更可靠、更精确的分析奠定基础。第二阶段涉及分割,这是大脑图像分析的关键步骤。将对各种分割方法进行评估,以确定它们在准确识别不同大脑结构方面的功效。最后,本文将深入探讨深度学习领域,特别是利用 CNN 根据疾病类型对大脑图像进行分类。这种复杂的方法有望通过识别图像中的细微模式来提高疾病识别的准确性。结论总之,这项研究希望实现脑图像分析领域的现代化和提升,最终为改善医疗诊断和洞察力做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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