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Panoptic-DeepLab

Authors :
Cheng, Bowen
Collins, Maxwell D.
Zhu, Yukun
Liu, Ting
Huang, Thomas S.
Adam, Hartwig
Chen, Liang-Chieh
Publication Year :
2019

Abstract

We present Panoptic-DeepLab, a bottom-up and single-shot approach for panoptic segmentation. Our Panoptic-DeepLab is conceptually simple and delivers state-of-the-art results. In particular, we adopt the dual-ASPP and dual-decoder structures specific to semantic, and instance segmentation, respectively. The semantic segmentation branch is the same as the typical design of any semantic segmentation model (e.g., DeepLab), while the instance segmentation branch is class-agnostic, involving a simple instance center regression. Our single Panoptic-DeepLab sets the new state-of-art at all three Cityscapes benchmarks, reaching 84.2% mIoU, 39.0% AP, and 65.5% PQ on test set, and advances results on the other challenging Mapillary Vistas.<br />Comment: This work is presented at ICCV 2019 Joint COCO and Mapillary Recognition Challenge Workshop

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.04751
Document Type :
Working Paper