基于CNN特征和SVM的结直肠放大NBI内镜计算机辅助诊断系统分类方法

Masayuki Odagawa, Takumi Okamoto, T. Koide, S. Yoshida, H. Mieno, Toru Tamaki, B. Raytchev, K. Kaneda, Shinji Tanaka
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引用次数: 1

摘要

本文提出了一种用于结直肠放大窄带内镜(NBI)计算机辅助诊断(CAD)系统的分类方法。对于组织学发现的分类,我们将来自预学习卷积神经网络(CNN)的病变内窥镜图像的输出结果作为特征向量,并通过学习一组CNN特征向量构建一组支持向量机(svm)。在视频图像中,每一帧图像都存在模糊、色移、光反射等外观变化,影响分类结果。为了提高CAD系统的鲁棒性,我们构建了多图像大小数据集学习的支持向量机,以适应视频图像特有的噪声。结果表明,该方法在内镜视频图像中具有较高的鲁棒性、稳定性和分类精度。该方法还可以处理新旧内窥镜的分辨率差异,并且相对于输入的内窥镜视频图像表现稳定。我们在基于FPGA的原型系统中实现了一个可定制的嵌入式DSP核心,并对所提出的方法进行了评估。
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Classification Method with CNN features and SVM for Computer-Aided Diagnosis System in Colorectal Magnified NBI Endoscopy
This paper presents a classification method for a Computer-Aided Diagnosis (CAD) system in a colorectal magnified Narrow Band Imaging (NBI) endoscopy. For the classification of a histologic findings, we consider an output result of a lesion endoscopic image from a pre-learned Convolutional Neural Network (CNN) as a feature vector and construct a set of Support Vector Machines (SVMs) by learning a set of the CNN feature vectors. In the video images, each frame has appearance changes such as blur, color shift, reflection of light and so on and it affects classification results. To improve the robustness of CAD system, we construct the SVM learned by multiple image sizes data sets so as to adapt to the noise peculiar to the video image. We confirmed that the proposed method achieves higher robustness, stable, and high classification accuracy in the endoscopic video image. The proposed method also can cope with differences in resolution by old and new endoscopes and perform stably with respect to the input endoscopic video image. We evaluated the proposed method on a customizable embedded DSP core implemented into a FPGA based prototyping system.
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