Penalizing Top Performers: Conservative Loss for Semantic Segmentation Adaptation

09/04/2018
by   Xinge Zhu, et al.
0

Due to the expensive and time-consuming annotations (e.g., segmentation) for real-world images, recent works in computer vision resort to synthetic data. However, the performance on the real image often drops significantly because of the domain shift between the synthetic data and the real images. In this setting, domain adaptation brings an appealing option. The effective approaches of domain adaptation shape the representations that (1) are discriminative for the main task and (2) have good generalization capability for domain shift. To this end, we propose a novel loss function, i.e., Conservative Loss, which penalizes the extreme good and bad cases while encouraging the moderate examples. More specifically, it enables the network to learn features that are discriminative by gradient descent and are invariant to the change of domains via gradient ascend method. Extensive experiments on synthetic to real segmentation adaptation show our proposed method achieves state of the art results. Ablation studies give more insights into properties of the Conservative Loss. Exploratory experiments and discussion demonstrate that our Conservative Loss has good flexibility rather than restricting an exact form.

READ FULL TEXT
research
05/18/2021

Content Disentanglement for Semantically Consistent Synthetic-to-RealDomain Adaptation in Urban Traffic Scenes

Synthetic data generation is an appealing approach to generate novel tra...
research
12/23/2020

Unsupervised Domain Adaptation for Semantic Segmentation by Content Transfer

In this paper, we tackle the unsupervised domain adaptation (UDA) for se...
research
11/30/2018

ADVENT: Adversarial Entropy Minimization for Domain Adaptation in Semantic Segmentation

Semantic segmentation is a key problem for many computer vision tasks. W...
research
04/23/2018

Fully Convolutional Adaptation Networks for Semantic Segmentation

The recent advances in deep neural networks have convincingly demonstrat...
research
11/19/2017

Unsupervised Domain Adaptation for Semantic Segmentation with GANs

Visual Domain Adaptation is a problem of immense importance in computer ...
research
01/14/2020

Unsupervised Domain Adaptation for Mobile Semantic Segmentation based on Cycle Consistency and Feature Alignment

The supervised training of deep networks for semantic segmentation requi...
research
03/17/2022

Mutual Learning for Domain Adaptation: Self-distillation Image Dehazing Network with Sample-cycle

Deep learning-based methods have made significant achievements for image...

Please sign up or login with your details

Forgot password? Click here to reset