One-Shot Learning for Semantic Segmentation
Author(s) -
Amirreza Shaban,
Shray Bansal,
Zhen Liu,
Irfan Essa,
Byron Boots
Publication year - 2017
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.31.167
Subject(s) - computer science , shot (pellet) , segmentation , artificial intelligence , natural language processing , organic chemistry , chemistry
Low-shot learning methods for image classification support learning from sparse data. We extend these techniques to support dense semantic image segmentation. Specifically, we train a network that, given a small set of annotated images, produces parameters for a Fully Convolutional Network (FCN). We use this FCN to perform dense pixel-level prediction on a test image for the new semantic class. Our architecture shows a 25% relative meanIoU improvement compared to the best baseline methods for one-shot segmentation on unseen classes in the PASCAL VOC 2012 dataset and is at least 3 times faster.
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