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GAN Mask R-CNN:Instance semantic segmentation benefits from generativeadversarial networks

2020-10-26 17:47:30
Quang H. Le, Kamal Youcef-Toumi, Dzmitry Tsetserukou, Ali Jahanian

Abstract

In designing instance segmentation ConvNets that reconstruct masks, segmentation is often taken as its literal definition -- assigning label to every pixel -- for defining the loss functions. That is, using losses that compute the difference between pixels in the predicted (reconstructed) mask and the ground truth mask -- a template matching mechanism. However, any such instance segmentation ConvNet is a generator, so we can lay the problem of predicting masks as a GANs game framework: We can think the ground truth mask is drawn from the true distribution, and a ConvNet like Mask R-CNN is an implicit model that infers the true distribution. Then, designing a discriminator in front of this generator will close the loop of GANs concept and more importantly obtains a loss that is trained not hand-designed. We show this design outperforms the baseline when trying on, without extra settings, several different domains: cellphone recycling, autonomous driving, large-scale object detection, and medical glands. Further, we observe in general GANs yield masks that account for better boundaries, clutter, and small details.

Abstract (translated)

URL

https://arxiv.org/abs/2010.13757

PDF

https://arxiv.org/pdf/2010.13757.pdf


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