Bipartite Conditional Random Fields for Panoptic Segmentation

12/11/2019
by   Sadeep Jayasumana, et al.
1

We tackle the panoptic segmentation problem with a conditional random field (CRF) model. Panoptic segmentation involves assigning a semantic label and an instance label to each pixel of a given image. At each pixel, the semantic label and the instance label should be compatible. Furthermore, a good panoptic segmentation should have a number of other desirable properties such as the spatial and color consistency of the labeling (similar looking neighboring pixels should have the same semantic label and the instance label). To tackle this problem, we propose a CRF model, named Bipartite CRF or BCRF, with two types of random variables for semantic and instance labels. In this formulation, various energies are defined within and across the two types of random variables to encourage a consistent panoptic segmentation. We propose a mean-field-based efficient inference algorithm for solving the CRF and empirically show its convergence properties. This algorithm is fully differentiable, and therefore, BCRF inference can be included as a trainable module in a deep network. In the experimental evaluation, we quantitatively and qualitatively show that the BCRF yields superior panoptic segmentation results in practice.

READ FULL TEXT

page 2

page 8

research
01/16/2012

Image Labeling and Segmentation using Hierarchical Conditional Random Field Model

The use of hierarchical Conditional Random Field model deal with the pro...
research
07/26/2016

Approximate Policy Iteration for Budgeted Semantic Video Segmentation

This paper formulates and presents a solution to the new problem of budg...
research
09/13/2018

Efficient Graph Cut Optimization for Full CRFs with Quantized Edges

Fully connected pairwise Conditional Random Fields (Full-CRF) with Gauss...
research
02/11/2015

Conditional Random Fields as Recurrent Neural Networks

Pixel-level labelling tasks, such as semantic segmentation, play a centr...
research
04/24/2015

Semantic Motion Segmentation Using Dense CRF Formulation

While the literature has been fairly dense in the areas of scene underst...
research
12/23/2018

End-to-end Learning for Graph Decomposition

We propose a novel end-to-end trainable framework for the graph decompos...
research
09/09/2014

Enforcing Label and Intensity Consistency for IR Target Detection

This study formulates the IR target detection as a binary classification...

Please sign up or login with your details

Forgot password? Click here to reset