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Conv-MCD: A Plug-and-Play Multi-task Module for Medical Image Segmentation

机译:Conv-MCD:用于医学图像分割的即插即用多任务模块

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摘要

For the task of medical image segmentation, fully convolutional network (FCN) based architectures have been extensively used with various modifications. A rising trend in these architectures is to employ joint-learning of the target region with an auxiliary task, a method commonly known as multi-task learning. These approaches help impose smoothness and shape priors, which vanilla FCN approaches do not necessarily incorporate. In this paper, we propose a novel plug-and-play module, which we term as Conv-MCD, which exploits structural information in two ways - (ⅰ) using the contour map and (ⅱ) using the distance map, both of which can be obtained from ground truth segmentation maps with no additional annotation costs. The key benefit of our module is the ease of its addition to any state-of-the-art architecture, resulting in a significant improvement in performance with a minimal increase in parameters. To substantiate the above claim, we conduct extensive experiments using 4 state-of-the-art architectures across various evaluation metrics, and report a significant increase in performance in relation to the base networks. In addition to the aforementioned experiments, we also perform ablative studies and visualization of feature maps to further elucidate our approach.
机译:对于医学图像分割的任务,基于全卷积网络(FCN)的体系结构已广泛使用,并进行了各种修改。这些体系结构中的一种上升趋势是将目标区域与辅助任务联合学习,该方法通常称为多任务学习。这些方法有助于强加平滑度和形状先验,而香草FCN方法不一定要合并。在本文中,我们提出了一种新颖的即插即用模块,称为Conv-MCD,它以两种方式利用结构信息-(ⅰ)使用轮廓图和(ⅱ)使用距离图,两者可以从地面真相分割图获得,而无需额外的注释成本。我们模块的主要优点是易于将其添加到任何最新的体系结构中,从而以最小的参数增加实现了性能上的显着改善。为了证明上述主张,我们使用4种最先进的体系结构对各种评估指标进行了广泛的实验,并报告了与基础网络相比性能的显着提高。除了上述实验之外,我们还进行了特征图的烧蚀研究和可视化,以进一步阐明我们的方法。

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