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Lesion Detection by Efficiently Bridging 3D Context

机译:通过有效地桥接3D背景来检测病变检测

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Lesion detection in CT (computed tomography) scan images is an important yet challenging task due to the low contrast of soft tissues and similar appearance between lesion and the background. Exploiting 3D context information has been studied extensively to improve detection accuracy. However, previous methods either use a 3D CNN which usually requires a sliding window strategy to inference and only acts on local patches; or simply concatenate feature maps of independent 2D CNNs to obtain 3D context information, which is less effective to capture 3D knowledge. To address these issues, we design a hybrid detector to combine benefits from both of the above methods. We propose to build several light-weighted 3D CNNs as subnets to bridge 2D CNNs' intermediate features, so that 2D CNNs are connected with each other which interchange 3D context information while feed-forwarding. Comprehensive experiments in DeepLesion dataset show that our method can combine 3D knowledge effectively and provide higher quality backbone features. Our detector surpasses the current state-of-the-art by a large margin with comparable speed and GPU memory consumption.
机译:CT(计算机断层扫描)扫描图像中的病变检测是由于软组织的低对比度和病变与背景之间的类似外观,这是一个重要而具有挑战性的任务。利用3D上下文信息已经广泛研究以提高检测精度。但是,以前的方法使用3D CNN,该3D CNN通常需要滑动窗口策略来推断,并且仅在本地贴片上起作用;或者简单地连接独立的2D CNN的特征映射以获得3D上下文信息,这对捕获3D知识不太有效。为了解决这些问题,我们设计混合探测器,以与上述方法中的两种方法组合益处。我们建议将几个光加权3D CNN作为子网构建以桥接2D CNNS的中间特征,使得2D CNNS在馈送转发时彼此连接的彼此连接的彼此连接。 Deepesion DataSet中的综合实验表明,我们的方法可以有效地结合3D知识并提供更高质量的骨干功能。我们的探测器通过具有可比速度和GPU存储器消耗的大型余量来超越当前的最先进。

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