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Learning to Segment via Cut-and-Paste (1803.06414v1)

Published 16 Mar 2018 in cs.CV

Abstract: This paper presents a weakly-supervised approach to object instance segmentation. Starting with known or predicted object bounding boxes, we learn object masks by playing a game of cut-and-paste in an adversarial learning setup. A mask generator takes a detection box and Faster R-CNN features, and constructs a segmentation mask that is used to cut-and-paste the object into a new image location. The discriminator tries to distinguish between real objects, and those cut and pasted via the generator, giving a learning signal that leads to improved object masks. We verify our method experimentally using Cityscapes, COCO, and aerial image datasets, learning to segment objects without ever having seen a mask in training. Our method exceeds the performance of existing weakly supervised methods, without requiring hand-tuned segment proposals, and reaches 90% of supervised performance.

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Authors (3)
  1. Tal Remez (26 papers)
  2. Jonathan Huang (46 papers)
  3. Matthew Brown (33 papers)
Citations (93)

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