IEEE Trans Med Imaging. 2020 Oct;39(10):3042-3052. doi: 10.1109/TMI.2020.2986331. Epub 2020 Apr 7.
Automatic Non-rigid Histological Image Registration (ANHIR) challenge was organized to compare the performance of image registration algorithms on several kinds of microscopy histology images in a fair and independent manner. We have assembled 8 datasets, containing 355 images with 18 different stains, resulting in 481 image pairs to be registered. Registration accuracy was evaluated using manually placed landmarks. In total, 256 teams registered for the challenge, 10 submitted the results, and 6 participated in the workshop. Here, we present the results of 7 well-performing methods from the challenge together with 6 well-known existing methods. The best methods used coarse but robust initial alignment, followed by non-rigid registration, used multiresolution, and were carefully tuned for the data at hand. They outperformed off-the-shelf methods, mostly by being more robust. The best methods could successfully register over 98% of all landmarks and their mean landmark registration accuracy (TRE) was 0.44% of the image diagonal. The challenge remains open to submissions and all images are available for download.
自动非刚性组织学图像配准(ANHIR)挑战赛旨在公平、独立地比较图像配准算法在多种显微镜组织学图像上的性能。我们收集了 8 个数据集,包含 18 种不同染色的 355 张图像,共得到 481 对需要配准的图像对。注册准确性使用手动放置的地标进行评估。总共有 256 个团队注册了挑战赛,其中 10 个团队提交了结果,6 个团队参加了研讨会。在这里,我们展示了挑战赛中 7 种表现良好的方法以及 6 种知名现有方法的结果。表现最好的方法使用了粗略但稳健的初始对齐,然后进行非刚性配准,使用了多分辨率,并针对手头的数据进行了仔细调整。它们的表现优于现成的方法,主要是因为它们更稳健。表现最好的方法可以成功注册超过 98%的所有地标,它们的平均地标注册精度(TRE)是图像对角线的 0.44%。挑战赛仍接受提交,所有图像均可下载。