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DETECTING PROTRUSION LESION IN DIGESTIVE TRACT USING A SINGLE-STAGE DETECTION METHOD

机译:单阶段检测法检测消化道中的病变

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The classification networks have already existed for a long time and achieve great success. However, in biomedical image processing, classifying normal and abnormal ones only is not enough clinically, the desired output should include localization, i.e., where the lesion is. In this paper, we present a method for detecting protrusion lesion in digestive tract. We use a deep learning-based model to build a computer-aided diagnosis system to help doctors examine the intestinal diseases. Learn from existing detection method, one-stage and two-stage detection algorithm, a new network suitable for protrusion lesion detection is proposed. We inherit the method of anchor generation in SSD, a fast single-stage object detector outperform R-CNN series in terms of speed. Multi-scale feature layers are assigned to generate different sizes of default anchor boxes. Different from the previous work, our method doesnt require additional preprocessing because the network can learn features autonomously. For the 256*256 input, our method achieves 73% AP, perform a novel way to detect protrusion lesions.
机译:分类网络已经存在很长时间,并取得了巨大的成功。然而,在生物医学图像处理中,仅将正常和异常图像分类在临床上是不够的,期望的输出应包括定位,即病变所在的位置。在本文中,我们提出了一种检测消化道突出病变的方法。我们使用基于深度学习的模型来构建计算机辅助诊断系统,以帮助医生检查肠道疾病。借鉴现有的检测方法,一阶段和两阶段检测算法,提出了一种适用于突出病变检测的新网络。我们继承了SSD中锚生成的方法,SSD是一种快速的单级目标检测器,在速度方面胜过R-CNN系列。分配了多比例要素图层以生成不同大小的默认锚点框。与以前的工作不同,我们的方法不需要额外的预处理,因为网络可以自主学习特征。对于256 * 256输入,我们的方法可达到73%的AP,执行一种检测突出病变的新颖方法。

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