Semantic Line Detection Using Mirror Attention
and Comparative Ranking and Matching

Dongkwon Jin
dongkwonjin@mcl.korea.ac.kr
Korea University

Jun-Tae Lee
jtlee@mcl.korea.ac.kr
Korea University

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

Abstract

A novel algorithm to detect semantic lines is proposed in this paper. We develop three networks: detection network with mirror attention (D-Net) and comparative ranking and matching networks (R-Net and M-Net). D-Net extracts semantic lines by exploiting rich contextual information. To this end, we design the mirror attention module. Then, through pairwise comparisons of extracted semantic lines, we iteratively select the most semantic line and remove redundant ones overlapping with the selected one. For the pairwise comparisons, we develop R-Net and M-Net in the Siamese architecture. Experiments demonstrate that the proposed algorithm outperforms the conventional semantic line detector significantly. Moreover, we apply the proposed algorithm to detect two important kinds of semantic lines successfully: dominant parallel lines and reflection symmetry axes.

Overview

Demo video

Publication

Dongkwon Jin, Jun-Tae Lee, and Chang-Su Kim, "Semantic Line Detection Using Mirror Attention and Comparative Ranking and Matching," accepted to Proceedings of European Conference on Computer Vision (ECCV), 2020.
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