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Detection of pathological condition in distal lung images

机译:远端肺部影像的病理状况检测

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Recently, the in vivo imaging of pulmonary alveoli was made possible thanks to confocal microscopy. For these new images, we wish to aid the clinician by developing a computer-aided diagnosis system, able to detect a pathological state in these images. An original approach that combines a texture-based characterization of the images and uses a boosted cascade of classifiers to detect a pathological condition is presented in this paper. We propose and compare two state-of-the-art texture descriptors: cooccurence matrices and local binary patterns (LBP). Recognition rates with LBP reach up to 86.3% and 95.1% for the non-smoking and smoking groups, respectively. Even though tests on extended databases are needed, these preliminary results are encouraging for this challenging task of image classification.
机译:最近,由于共聚焦显微镜技术,使肺泡的体内成像成为可能。对于这些新图像,我们希望通过开发能够在这些图像中检测病理状态的计算机辅助诊断系统来帮助临床医生。本文提出了一种原始方法,该方法结合了图像的基于纹理的表征并使用增强的分类器级联来检测病理状况。我们提出并比较了两个最先进的纹理描述符:共生矩阵和局部二进制模式(LBP)。非吸烟组和吸烟组的LBP识别率分别达到86.3%和95.1%。即使需要在扩展的数据库上进行测试,这些初步结果对于这一具有挑战性的图像分类任务还是令人鼓舞的。

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