MFP: Making Full Use of Probability Maps for Interactive Image Segmentation

Chaewon Lee
chaewonlee@mcl.korea.ac.kr
Korea University

Seon-Ho Lee
seonholee@mcl.korea.ac.kr
Korea University

Chang-Su Kim
changsukim@korea.ac.kr
Korea University

Abstract

In recent interactive segmentation algorithms, previous probability maps are used as network input to help predictions in the current segmentation round. However, despite the utilization of previous masks, useful information contained in the probability maps is not well propagated to the current predictions. In this paper, to overcome this limitation, we propose a novel and effective algorithm for click-based interactive image segmentation, called MFP, which attempts to make full use of probability maps. We first modulate previous probability maps to enhance their representations of user-specified objects. Then, we feed the modulated probability maps as additional input to the segmentation network. We implement the proposed MFP algorithm based on the ResNet-34, HRNet-18, and ViT-B backbones and assess the performance extensively on various datasets. It is demonstrated that MFP meaningfully outperforms the existing algorithms using identical backbones.

Overview

Publication

Chaewon Lee, Seon-Ho Lee and Chang-Su Kim, "MFP: Making Full Use of Probability Maps for Interactive Image Segmentation," accepted to Conference on Computer Vision and Pattern Recognition(CVPR), 2024.
[paper] [code]