A UNIFIED PARADIGM OF CLASSIFYING GI TRACT DISEASES IN ENDOSCOPY IMAGES USING MULTIPLE FEATURES FUSION

Muhammad Afraz, Abdul Haseeb, Abdul Muiz Fayyaz
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Abstract

The automatic identification of Gastrointestinal (GI) tract diseases in endoscopy images has been associated with the domain of medical imaging and computer vision. Its classification has various challenges, including color, low contrast, lesion shape, and complex background. A Deep features-based method for the classification of gastrointestinal disease is implemented in this article. The method suggested involves four significant steps: preprocessing, extraction of handcrafted, and deep Convolutional neural network features (Deep CNN), selection of solid features, fusion, and classification. 3D-Median filtering in the preprocessing stage increases the lesion contrast. The second stage extracts the features centered on the shape. The extracted features are of three types: HOG features, ResNet50, and Xception. Principal Component Analysis (PCA) is chosen to select extracted features, combined by concatenating them in a single array. A support vector system eventually categorizes fused features into multiple classes. The Kvasir dataset is used for the proposed model. The SVM has outstanding efficiency reached 96.6 percent, showing the proposed system's robustness
基于多特征融合的内镜图像中消化道疾病分类的统一范式
内镜图像中胃肠道疾病的自动识别一直是医学成像和计算机视觉领域的研究热点。它的分类面临着各种挑战,包括颜色、低对比度、病变形状和复杂的背景。本文实现了一种基于深度特征的胃肠道疾病分类方法。该方法包括四个重要步骤:预处理,提取手工和深度卷积神经网络特征(deep CNN),选择实体特征,融合和分类。预处理阶段的3d -中值滤波增强了病灶对比度。第二阶段提取以形状为中心的特征。提取的特征有HOG特征、ResNet50特征和Xception特征三种类型。选择主成分分析(PCA)来选择提取的特征,并通过将它们连接在一个数组中进行组合。支持向量系统最终将融合的特征分为多个类别。该模型使用Kvasir数据集。支持向量机的效率达到96.6%,显示了系统的鲁棒性
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