Learning Debiased and Disentangled Representations for Semantic Segmentation

10/31/2021
by   Sanghyeok Chu, et al.
0

Deep neural networks are susceptible to learn biased models with entangled feature representations, which may lead to subpar performances on various downstream tasks. This is particularly true for under-represented classes, where a lack of diversity in the data exacerbates the tendency. This limitation has been addressed mostly in classification tasks, but there is little study on additional challenges that may appear in more complex dense prediction problems including semantic segmentation. To this end, we propose a model-agnostic and stochastic training scheme for semantic segmentation, which facilitates the learning of debiased and disentangled representations. For each class, we first extract class-specific information from the highly entangled feature map. Then, information related to a randomly sampled class is suppressed by a feature selection process in the feature space. By randomly eliminating certain class information in each training iteration, we effectively reduce feature dependencies among classes, and the model is able to learn more debiased and disentangled feature representations. Models trained with our approach demonstrate strong results on multiple semantic segmentation benchmarks, with especially notable performance gains on under-represented classes.

READ FULL TEXT

page 7

page 8

page 9

research
04/07/2022

Pin the Memory: Learning to Generalize Semantic Segmentation

The rise of deep neural networks has led to several breakthroughs for se...
research
01/16/2019

Domain Adaptation for Structured Output via Discriminative Representations

Predicting structured outputs such as semantic segmentation relies on ex...
research
07/06/2020

Metric-Guided Prototype Learning

Not all errors are created equal. This is especially true for many key m...
research
01/16/2019

Domain Adaptation for Structured Output via Discriminative Patch Representations

Predicting structured outputs such as semantic segmentation relies on ex...
research
05/20/2020

Reducing Overlearning through Disentangled Representations by Suppressing Unknown Tasks

Existing deep learning approaches for learning visual features tend to o...
research
09/07/2015

Structured Prediction with Output Embeddings for Semantic Image Annotation

We address the task of annotating images with semantic tuples. Solving t...
research
03/23/2017

Self corrective Perturbations for Semantic Segmentation and Classification

Convolutional Neural Networks have been a subject of great importance ov...

Please sign up or login with your details

Forgot password? Click here to reset