Urban Scene Semantic Segmentation with Low-Cost Coarse Annotation

12/15/2022
by   Anurag Das, et al.
0

For best performance, today's semantic segmentation methods use large and carefully labeled datasets, requiring expensive annotation budgets. In this work, we show that coarse annotation is a low-cost but highly effective alternative for training semantic segmentation models. Considering the urban scene segmentation scenario, we leverage cheap coarse annotations for real-world captured data, as well as synthetic data to train our model and show competitive performance compared with finely annotated real-world data. Specifically, we propose a coarse-to-fine self-training framework that generates pseudo labels for unlabeled regions of the coarsely annotated data, using synthetic data to improve predictions around the boundaries between semantic classes, and using cross-domain data augmentation to increase diversity. Our extensive experimental results on Cityscapes and BDD100k datasets demonstrate that our method achieves a significantly better performance vs annotation cost tradeoff, yielding a comparable performance to fully annotated data with only a small fraction of the annotation budget. Also, when used as pretraining, our framework performs better compared to the standard fully supervised setting.

READ FULL TEXT

page 1

page 3

page 8

research
08/22/2018

Coarse-to-Fine Annotation Enrichment for Semantic Segmentation Learning

Rich high-quality annotated data is critical for semantic segmentation l...
research
07/02/2018

Semantic Segmentation with Scarce Data

Semantic segmentation is a challenging vision problem that usually neces...
research
09/11/2020

Variance Loss: A Confidence-Based Reweighting Strategy for Coarse Semantic Segmentation

Coarsely-labeled semantic segmentation annotations are easy to obtain, b...
research
04/30/2020

Improving Semantic Segmentation via Self-Training

Deep learning usually achieves the best results with complete supervisio...
research
10/30/2019

Auto-Annotation Quality Prediction for Semi-Supervised Learning with Ensembles

Auto-annotation by ensemble of models is an efficient method of learning...
research
10/21/2021

Learning 3D Semantic Segmentation with only 2D Image Supervision

With the recent growth of urban mapping and autonomous driving efforts, ...
research
02/14/2022

COLA: COarse LAbel pre-training for 3D semantic segmentation of sparse LiDAR datasets

Transfer learning is a proven technique in 2D computer vision to leverag...

Please sign up or login with your details

Forgot password? Click here to reset