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Image Processing Strategies for Automatic Detection of Common Gastroenterological Diseases

机译:自动检测常见消化道疾病的图像处理策略

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The analysis of Confocal Laser Endomicroscopy (CLE) is one of the techniques used for diagnosing gastroenterological diseases. However, the manual analysis of such images requires training and experience and will often lead to wrong diagnostics. This work explores the use of attributes taken from classic texture description techniques, gray level co-occurrence matrices (GLCM) and local binary patterns (LBP), as inputs for classifiers to separate images from 3 common gastroenterological diseases, with 262 images. A baseline classifier was trained for the 10 smaller groups and two others were trained using GLCM and LBP attributes. Overall, the benefits of using texture analysis techniques and attributes can be observed as an increase in accuracy and consistency of the results.
机译:共聚焦激光内窥镜检查(CLE)的分析是用于诊断肠胃疾病的技术之一。但是,对此类图像进行手动分析需要培训和经验,并且通常会导致错误的诊断。这项工作探索了从经典纹理描述技术,灰度共现矩阵(GLCM)和局部二进制模式(LBP)中获取的属性的使用,作为分类器的输入,以将其与3种常见胃肠病疾病分离为262张图像。为10个较小的组训练了一个基线分类器,并使用GLCM和LBP属性对另外两个进行了训练。总体而言,可以将使用纹理分析技术和属性的好处视为结果准确性和一致性的提高。

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