Semantic Segmentation using Adversarial Networks

11/25/2016
by   Pauline Luc, et al.
0

Adversarial training has been shown to produce state of the art results for generative image modeling. In this paper we propose an adversarial training approach to train semantic segmentation models. We train a convolutional semantic segmentation network along with an adversarial network that discriminates segmentation maps coming either from the ground truth or from the segmentation network. The motivation for our approach is that it can detect and correct higher-order inconsistencies between ground truth segmentation maps and the ones produced by the segmentation net. Our experiments show that our adversarial training approach leads to improved accuracy on the Stanford Background and PASCAL VOC 2012 datasets.

READ FULL TEXT

page 6

page 7

research
08/07/2019

I Bet You Are Wrong: Gambling Adversarial Networks for Structured Semantic Segmentation

Adversarial training has been recently employed for realizing structured...
research
04/20/2021

Semantic Segmentation by Improved Generative Adversarial Networks

While most existing segmentation methods usually combined the powerful f...
research
05/24/2023

Semantic Segmentation by Semantic Proportions

Semantic segmentation is a critical task in computer vision that aims to...
research
06/19/2020

Lookahead Adversarial Semantic Segmentation

Semantic segmentation is one of the most fundamental problems in compute...
research
12/14/2020

Scaling Semantic Segmentation Beyond 1K Classes on a Single GPU

The state-of-the-art object detection and image classification methods c...
research
03/23/2023

Generative Image Inpainting with Segmentation Confusion Adversarial Training and Contrastive Learning

This paper presents a new adversarial training framework for image inpai...
research
04/08/2019

Pushing the right boundaries matters! Wasserstein Adversarial Training for Label Noise

Noisy labels often occur in vision datasets, especially when they are is...

Please sign up or login with your details

Forgot password? Click here to reset