SuperWarp: Supervised Learning and Warping on U-Net for Invariant Subvoxel-Precise Registration.

Sean I Young, Yaël Balbastre, Adrian V Dalca, William M Wells, Juan Eugenio Iglesias, Bruce Fischl
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Abstract

In recent years, learning-based image registration methods have gradually moved away from direct supervision with target warps to instead use self-supervision, with excellent results in several registration benchmarks. These approaches utilize a loss function that penalizes the intensity differences between the fixed and moving images, along with a suitable regularizer on the deformation. However, since images typically have large untextured regions, merely maximizing similarity between the two images is not sufficient to recover the true deformation. This problem is exacerbated by texture in other regions, which introduces severe non-convexity into the landscape of the training objective and ultimately leads to overfitting. In this paper, we argue that the relative failure of supervised registration approaches can in part be blamed on the use of regular U-Nets, which are jointly tasked with feature extraction, feature matching and deformation estimation. Here, we introduce a simple but crucial modification to the U-Net that disentangles feature extraction and matching from deformation prediction, allowing the U-Net to warp the features, across levels, as the deformation field is evolved. With this modification, direct supervision using target warps begins to outperform self-supervision approaches that require segmentations, presenting new directions for registration when images do not have segmentations. We hope that our findings in this preliminary workshop paper will re-ignite research interest in supervised image registration techniques. Our code is publicly available from http://github.com/balbasty/superwarp.

Abstract Image

Abstract Image

SuperWarp:在 U-Net 上进行监督学习和翘曲,以实现不变的亚体素精确定位。
近年来,基于学习的图像配准方法逐渐摆脱了目标翘曲的直接监督,转而使用自我监督,并在多个配准基准测试中取得了优异成绩。这些方法利用损失函数对固定图像和移动图像之间的强度差异进行惩罚,并对变形进行适当的正则处理。然而,由于图像通常有较大的非纹理区域,仅仅最大化两幅图像之间的相似性并不足以恢复真实的变形。其他区域的纹理会加剧这一问题,从而给训练目标带来严重的非凸性,最终导致过度拟合。在本文中,我们认为监督式配准方法的相对失败部分归咎于常规 U-Nets 的使用,而 U-Nets 的共同任务是特征提取、特征匹配和形变估计。在这里,我们对 U-Net 引入了一个简单而关键的修改,将特征提取和匹配与形变预测分离开来,允许 U-Net 随着形变场的演化而跨级扭曲特征。通过这种修改,使用目标翘曲的直接监督方法开始优于需要分割的自我监督方法,为没有分割的图像提供了新的注册方向。我们希望这篇初步研讨会论文中的发现能重新点燃人们对监督图像配准技术的研究兴趣。我们的代码可从 http://github.com/balbasty/superwarp 公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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