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Feature Context Aggregation Network with Edge Enhance for Endoscopic Gastrointestinal Bleeding Images Segmentation

机译:具有边缘增强内窥镜胃肠出血图像分割的特征上下文聚合网络

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Gastrointestinal (GI) bleeding is one of the most common abnormalities in the GI tract. Accurate segmentation of GI bleeding regions is helpful to identify a variety of GI diseases such as ulcers, polyps, tumors, and Crohns disease, which is of great importance to assist doctors in precise diagnosis. However, the interference factors, such as air bubbles and secretions in the bleeding region may cause the problems of hole and fuzzy edge in the segmentation results. To solve these two problems and improve segmentation accuracy, a new deep learning method is proposed to extract the context information and the edge information of GI bleeding regions by using Context Information Aggregation Module (CIAM), Feature Attention Module (FAM) and Edge Enhancement Module (EEM). The proposed method is evaluated on a public dataset and achieves 86.069% in mean intersection over union (IoU), which shows better performance than the most advanced GI bleeding segmentation methods.
机译:胃肠道(GI)出血是GI道中最常见的异常之一。 GI出血区域的准确细分有助于鉴定各种GI疾病,例如溃疡,息肉,肿瘤和克罗斯病,这非常重视,以协助医生在精确的诊断中。 然而,诸如出血区域中的气泡和分泌物的干扰因子可能导致分段结果中的孔和模糊边缘的问题。 为了解决这两个问题并提高分割精度,建议使用上下文信息聚合模块(CIAM)来提取新的深度学习方法来提取GI出血区域的上下文信息和边缘信息,具有注意模块(FAM)和边缘增强模块 (EEM)。 该方法在公共数据集上进行评估,并在联盟(IOU)的平均交叉口中实现86.069%,其表现出比最先进的GI出血分段方法更好的性能。

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