WRD-Net: Water Reflection Detection Using A Parallel Attention Transformer
In contrast to symmetry detection, Water Reflection Detection (WRD) is less studied. We treat this topic as a Symmetry Axis Point Prediction task which outputs a set of points by implicitly learning Gaussian heat maps and explicitly learning numerical coordinates. We first collect a new data set, namely, the Water Reflection Scene Data Set (WRSD). Then, we introduce a novel Water Reflection Detection Network, i.e., WRD-Net. This network is built on top of a series of Parallel Attention Vision Transformer blocks with the Atrous Spatial Pyramid (ASP-PAViT) that we deliberately design. Each block captures both the local and global features at multiple scales. To our knowledge, neither the WRSD nor the WRD-Net has been used for water reflection detection before. To derive the axis of symmetry, we perform Principal Component Analysis (PCA) on the points predicted. Experimental results show that the WRD-Net outperforms its counterparts and achieves the true positive rate of 0.823 compared with the human annotation.
Funding
National Natural Science Foundation of China (NSFC) (No. 42176196) and was in part supported by the Young Taishan Scholars Program (No. tsqn201909060)
History
Author affiliation
College of Science & Engineering/Comp' & Math' SciencesVersion
- AM (Accepted Manuscript)
Published in
Pattern RecognitionPublisher
Elsevierissn
0031-3203eissn
1873-5142Copyright date
2024Available date
2025-04-03Publisher DOI
Language
enPublisher version
Deposited by
Professor Huiyu ZhouDeposit date
2024-04-01Data Access Statement
Data will be made available on requestRights Retention Statement
- No