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Deep Complementary Joint Model for Complex Scene Registration and Few-Shot Segmentation on Medical Images

机译:复杂场景登记的深度互补联合模型及医学图像的几次分段

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Deep learning-based medical image registration and segmentation joint models utilize the complementarity (augmentation data or weakly supervised data from registration, region constraints from segmentation) to bring mutual improvement in complex scene and few-shot situation. However, further adoption of the joint models are hindered: 1) the diversity of augmentation data is reduced limiting the further enhancement of segmentation, 2) misaligned regions in weakly supervised data disturb the training process, 3) lack of label-based region constraints in few-shot situation limits the registration performance. We propose a novel Deep Complementary Joint Model (DeepRS) for complex scene registration and few-shot segmentation. We embed a perturbation factor in the registration to increase the activity of deformation thus maintaining the augmentation data diversity. We take a pixel-wise discriminator to extract alignment confidence maps which highlight aligned regions in weakly supervised data so the misaligned regions' disturbance will be suppressed via weighting. The outputs from segmentation model are utilized to implement deep-based region constraints thus relieving the label requirements and bringing fine registration. Extensive experiments on the CT dataset of MM-WHS 2017 Challenge [42] show great advantages of our DeepRS that outperforms the existing state-of-the-art models.
机译:基于深度学习的医学图像登记和分割联合模型利用互补性(增强数据或来自分段的区域约束的弱监督数据)来实现复杂场景和几次射击情况的相互改进。然而,接触模型的进一步采用受阻:1)增强数据的多样性降低了限制分割的进一步增强,2)弱势监督数据中未对准地区扰乱培训过程,3)缺乏基于标签的区域限制。少量镜头情况限制了注册绩效。我们为复杂的场景登记和几次分割提出了一种新的深度互补联合模型(DEEPRS)。我们在注册中嵌入了扰动因子,以增加变形的活动,从而保持增强数据分集。我们采用像素明智的鉴别器来提取对准置位图,该围线地图突出显示弱监管数据中的对齐区域,因此通过加权将抑制未对准的区域的干扰。用于分割模型的输出用于实现基于深度的区域约束,从而减轻标签要求并带来精细的注册。关于MM-WHS 2017挑战的CT数据集的广泛实验[42]表现出我们的DEEPRS的巨大优势,以满足现有的最先进的模型。

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