Litcius/Paper detail

Warp-Refine Propagation: Semi-Supervised Auto-labeling via Cycle-consistency

Aditya Ganeshan, Alexis Vallet, Yasunori Kudo, Shin‐ichi Maeda, Tommi Kerola, Rareş Ambruş, Dennis Park, Adrien Gaidon

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)14 citationsDOI

Abstract

Deep learning models for semantic segmentation rely on expensive, large-scale, manually annotated datasets. Labelling is a tedious process that can take hours per image. Automatically annotating video sequences by propagating sparsely labeled frames through time is a more scalable alternative. In this work, we propose a novel label propagation method, termed Warp-Refine Propagation, that combines semantic cues with geometric cues to efficiently auto-label videos. Our method learns to refine geometrically-warped labels and infuse them with learned semantic priors in a semi-supervised setting by leveraging cycle-consistency across time. We quantitatively show that our method improves label-propagation by a noteworthy margin of 13.1 mIoU on the ApolloScape dataset. Furthermore, by training with the auto-labelled frames, we achieve competitive results on three semantic-segmentation benchmarks, improving the state-of-the-art by a large margin of 1.8 and 3.61 mIoU on NYU-V2 and KITTI, while matching the current best results on Cityscapes.

Topics & Concepts

Computer scienceMargin (machine learning)SegmentationArtificial intelligenceConsistency (knowledge bases)ScalabilityPrior probabilityProcess (computing)Matching (statistics)Structured predictionPattern recognition (psychology)Pipeline (software)Machine learningComputer visionMathematicsBayesian probabilityOperating systemProgramming languageDatabaseStatisticsVideo Surveillance and Tracking MethodsAdvanced Neural Network ApplicationsAdvanced Image and Video Retrieval Techniques