Progressive Glass Segmentation
Letian Yu, Haiyang Mei, Wen Dong, Ziqi Wei, Li Zhu, Yuxin Wang, Xin, Yang

TL;DR
This paper introduces a progressive glass segmentation method that effectively fuses multi-level features by enhancing discriminability and exploring feature differences, addressing the unique challenges posed by glass's visual properties.
Contribution
It proposes a novel two-step feature fusion approach with the Discriminability Enhancement and Focus-and-Exploration modules for improved glass segmentation accuracy.
Findings
Enhanced segmentation accuracy demonstrated on benchmark datasets.
Effective feature fusion improves robustness against complex scenes.
Method outperforms existing glass segmentation techniques.
Abstract
Glass is very common in the real world. Influenced by the uncertainty about the glass region and the varying complex scenes behind the glass, the existence of glass poses severe challenges to many computer vision tasks, making glass segmentation as an important computer vision task. Glass does not have its own visual appearances but only transmit/reflect the appearances of its surroundings, making it fundamentally different from other common objects. To address such a challenging task, existing methods typically explore and combine useful cues from different levels of features in the deep network. As there exists a characteristic gap between level-different features, i.e., deep layer features embed more high-level semantics and are better at locating the target objects while shallow layer features have larger spatial sizes and keep richer and more detailed low-level information, fusing…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Visual Attention and Saliency Detection · Retinal Imaging and Analysis
