Deep Learning of Radiometrical and Geometrical Sar Distorsions For Image Modality Translations
Antoine Bralet, Abdourrahmane M. Atto, Jocelyn Chanussot, Emmanuel Trouv�
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Recent deep learning-based contour detection studies show high accuracy in single-class boundary detection problems. However, this performance does not translate well in a multi-class scenario where continuous contours are required. Our research presents CU-Net, a U-Net-based network with residual-net encoders which can produce accurate and uninterrupted contour lines for multiple classes. The critical factor behind this concept is our continuity module, containing an interpolation layer and a novel activation function that converts discrete signals into smooth contours. We find the application of our approach in medical imaging problems like retinal layer segmentation from optical coherence tomography (OCT) scans. We applied our method to an expert annotated OCT dataset of children with sickle-cell disease. To compare with benchmarks, we evaluated our network on DME and HC-MS datasets. We achieved an overall mean absolute distance of 6.48 �2.04?M and 1.97 �0.89?M, respectively 1.03 and 1.4 times less than the current state-of-the-art.