ML Seminar Series

EDAPS: Enhanced Domain-Adaptive Panoptic Segmentation

by Dr Suman SAHA

Europe/Zurich
OHSA/B17

OHSA/B17

Description

Abstract: With autonomous industries on the rise, domain adaptation of the visual perception stack is an important research direction due to the cost savings promise. Much prior art was dedicated to domain-adaptive semantic segmentation in the synthetic-to-real context. Despite being a crucial output of the perception stack, panoptic segmentation has been largely overlooked by the domain adaptation community. Therefore, we revisit well-performing domain adaptation strategies from other fields, adapt them to panoptic segmentation, and show that they can effectively enhance panoptic domain adaptation. Further, we study the panoptic network design and propose a novel architecture (EDAPS) designed explicitly for domain-adaptive panoptic segmentation. It uses a shared, domain-robust transformer encoder to facilitate the joint adaptation of semantic and instance features, but task-specific decoders tailored for the specific requirements of both domain-adaptive semantic and instance segmentation. As a result, the performance gap seen in challenging panoptic benchmarks is substantially narrowed. EDAPS significantly improves the state-of-the-art performance for panoptic segmentation UDA by a large margin of 25% on SYNTHIA-to-Cityscapes and even 72% on the more challenging SYNTHIA-to-Mapillary Vistas.

For those who will participate by ZOOM:

https://psich.zoom.us/j/61061102871?pwd=Q2xrdXNhQ3RIRWgwdWNiQ2tYeXgxdz09
Meeting-ID: 610 6110 2871       Passcode: 856402 

 

 

Organised by

Laboratory for Simulation and Modeling
SDSC Hub at PSI

Registration
Participants
Participants
  • Arnau Albà
  • Benjamin Bejar
  • Jochem Snuverink
  • Pranas Juknevicius
  • Renato Bellotti
  • Suman Saha
  • Tomasz Kacprzak
  • +10
Dr. Benjamin Bejar Haro