English

Instance-Level Segmentation for Autonomous Driving with Deep Densely Connected MRFs

Computer Vision and Pattern Recognition 2016-04-28 v2

Abstract

Our aim is to provide a pixel-wise instance-level labeling of a monocular image in the context of autonomous driving. We build on recent work [Zhang et al., ICCV15] that trained a convolutional neural net to predict instance labeling in local image patches, extracted exhaustively in a stride from an image. A simple Markov random field model using several heuristics was then proposed in [Zhang et al., ICCV15] to derive a globally consistent instance labeling of the image. In this paper, we formulate the global labeling problem with a novel densely connected Markov random field and show how to encode various intuitive potentials in a way that is amenable to efficient mean field inference [Kr\"ahenb\"uhl et al., NIPS11]. Our potentials encode the compatibility between the global labeling and the patch-level predictions, contrast-sensitive smoothness as well as the fact that separate regions form different instances. Our experiments on the challenging KITTI benchmark [Geiger et al., CVPR12] demonstrate that our method achieves a significant performance boost over the baseline [Zhang et al., ICCV15].

Keywords

Cite

@article{arxiv.1512.06735,
  title  = {Instance-Level Segmentation for Autonomous Driving with Deep Densely Connected MRFs},
  author = {Ziyu Zhang and Sanja Fidler and Raquel Urtasun},
  journal= {arXiv preprint arXiv:1512.06735},
  year   = {2016}
}
R2 v1 2026-06-22T12:15:09.551Z