Recent Advancements in the field of Image and Video Processing part2(Computer Vision)

#artificialintelligence 

Abstract: Convolutional neural networks have been widely applied to medical image segmentation and have achieved considerable performance. However, the perfor- mance may be significantly affected by the domain gap between training data (source domain) and testing data (target domain). To address this issue, we propose a data manipulation based domain generalization method, called Automated Augmentation for Domain Generalization (AADG). Our AADG framework can effectively sample data augmentation policies that generate novel domains and diversify the training set from an appropriate search space. Specifically, we introduce a novel proxy task maximizing the diversity among multiple augmented novel domains as measured by the Sinkhorn distance in a unit sphere space, making automated augmentation tractable.

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