Back to Search Start Over

HS3: Learning with Proper Task Complexity in Hierarchically Supervised Semantic Segmentation

Authors :
Borse, Shubhankar
Cai, Hong
Zhang, Yizhe
Porikli, Fatih
Publication Year :
2021

Abstract

While deeply supervised networks are common in recent literature, they typically impose the same learning objective on all transitional layers despite their varying representation powers. In this paper, we propose Hierarchically Supervised Semantic Segmentation (HS3), a training scheme that supervises intermediate layers in a segmentation network to learn meaningful representations by varying task complexity. To enforce a consistent performance vs. complexity trade-off throughout the network, we derive various sets of class clusters to supervise each transitional layer of the network. Furthermore, we devise a fusion framework, HS3-Fuse, to aggregate the hierarchical features generated by these layers, which can provide rich semantic contexts and further enhance the final segmentation. Extensive experiments show that our proposed HS3 scheme considerably outperforms vanilla deep supervision with no added inference cost. Our proposed HS3-Fuse framework further improves segmentation predictions and achieves state-of-the-art results on two large segmentation benchmarks: NYUD-v2 and Cityscapes.<br />Comment: Accepted to BMVC 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.02333
Document Type :
Working Paper