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Ensemble of Texture and Deep Learning Features for Finding Abnormalities in the Gastro-Intestinal Tract

机译:用于在胃肠道中寻找异常的质地和深度学习功能的集合

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An endoscopy is a strategy in which a specialist utilizes specific instruments to see and work on the inward vessels and organs of the body. This paper expects to predict the abnormalities and diseases in the Gastro-Intestinal Tract, utilizing multimedia data acquired from endoscopy. Deep Analysis of GI tract pictures can foresee diseases and abnormalities, in its early stages and accordingly spare human lives. In this paper, a novel ensemble method is presented, where texture and deep learning features are integrated to improve the prediction of the abnormalities in the GI tract e.g. Peptic ulcer disease. Multimedia content analysis (to extricate data from the visual information) and machine learning (for classification) have been explored. Deep learning has additionally been joined by means of Transfer learning. Medieval Benchmarking Initiative for Multimedia Evaluation provided the dataset, which includes 8000 pictures. The data is gathered from conventional colonoscopy process. Using logistic regression and ensemble of different extracted features, 83% accuracy and a F1 score of 0.821 is achieved on testing sample. The proposed approach is compared with several state-of-the-art methods and results have indicated significant performance gains when compared with other approaches.
机译:内窥镜检查是一种专家利用特定乐器的策略,以便在身体内向船上和器官上工作。本文期望利用从内窥镜检查中获得的多媒体数据来预测胃肠道中的异常和疾病。对Gi Tract图片的深入分析可以预见到其早期阶段的疾病和异常,并因此备用人类生命。本文提出了一种新的集合方法,其中界定了纹理和深度学习特征,以改善Gi沟的异常的预测。消化性溃疡病。已经探讨了多媒体内容分析(从视觉信息中提取数据)和机器学习(用于分类)。深入学习还通过转移学习加入。多媒体评估的中世纪基准倡议提供了数据集,包括8000张照片。从传统的结肠镜检查过程中收集数据。使用逻辑回归和不同提取的特征的集合,在测试样品上实现了83%的精度和0.821的F1得分。将所提出的方法与几种最先进的方法进行比较,与其他方法相比,结果表明了显着的性能提升。

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