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胃感染分类:卷积神经网络与经典特征融合和选择范例。

Classification of stomach infections: A paradigm of convolutional neural network along with classical features fusion and selection.

机构信息

Department of Computer Science, COMSATS University Islamabad, Wah Campus, Wah Cantt, Pakistan.

Department of Computer Science, HITEC University Museum Road, Taxila, Rawalpindi, Pakistan.

出版信息

Microsc Res Tech. 2020 May;83(5):562-576. doi: 10.1002/jemt.23447. Epub 2020 Jan 27.

DOI:10.1002/jemt.23447
PMID:31984630
Abstract

Automated detection and classification of gastric infections (i.e., ulcer, polyp, esophagitis, and bleeding) through wireless capsule endoscopy (WCE) is still a key challenge. Doctors can identify these endoscopic diseases by using the computer-aided diagnostic (CAD) systems. In this article, a new fully automated system is proposed for the recognition of gastric infections through multi-type features extraction, fusion, and robust features selection. Five key steps are performed-database creation, handcrafted and convolutional neural network (CNN) deep features extraction, a fusion of extracted features, selection of best features using a genetic algorithm (GA), and recognition. In the features extraction step, discrete cosine transform, discrete wavelet transform strong color feature, and VGG16-based CNN features are extracted. Later, these features are fused by simple array concatenation and GA is performed through which best features are selected based on K-Nearest Neighbor fitness function. In the last, best selected features are provided to Ensemble classifier for recognition of gastric diseases. A database is prepared using four datasets-Kvasir, CVC-ClinicDB, Private, and ETIS-LaribPolypDB with four types of gastric infections such as ulcer, polyp, esophagitis, and bleeding. Using this database, proposed technique performs better as compared to existing methods and achieves an accuracy of 96.5%.

摘要

通过无线胶囊内窥镜 (WCE) 自动检测和分类胃感染(即溃疡、息肉、食管炎和出血)仍然是一个关键挑战。医生可以使用计算机辅助诊断 (CAD) 系统来识别这些内窥镜疾病。在本文中,提出了一种新的全自动系统,通过多类型特征提取、融合和稳健特征选择来识别胃感染。该系统执行了五个关键步骤:数据库创建、手工和卷积神经网络 (CNN) 深度特征提取、提取特征的融合、使用遗传算法 (GA) 选择最佳特征以及识别。在特征提取步骤中,提取了离散余弦变换、离散小波变换强颜色特征和基于 VGG16 的 CNN 特征。然后,通过简单的数组连接融合这些特征,并通过 GA 基于 K-Nearest Neighbor 适应度函数选择最佳特征。最后,将最佳选择的特征提供给集成分类器,以识别胃部疾病。该数据库使用了四个数据集 - Kvasir、CVC-ClinicDB、Private 和 ETIS-LaribPolypDB,并包含了溃疡、息肉、食管炎和出血等四种类型的胃感染。使用该数据库,与现有方法相比,所提出的技术表现更好,准确率达到 96.5%。

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