A GAN with spatial pyramid pooling, kernel factorization, and squeeze-excitation blocks is applied to retinal vessel segmentation and reports better results than prior methods on DRIVE and STARE.
Comput Med Imaging Graph 68, 1–15 (2018)
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Adversarial Learning with Multiscale Features and Kernel Factorization for Retinal Blood Vessel Segmentation
A GAN with spatial pyramid pooling, kernel factorization, and squeeze-excitation blocks is applied to retinal vessel segmentation and reports better results than prior methods on DRIVE and STARE.