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Large-Field Contextual Feature Learning for Glass Detection.

作者信息

Mei Haiyang, Yang Xin, Yu Letian, Zhang Qiang, Wei Xiaopeng, Lau Rynson W H

出版信息

IEEE Trans Pattern Anal Mach Intell. 2023 Mar;45(3):3329-3346. doi: 10.1109/TPAMI.2022.3181973. Epub 2023 Feb 3.

DOI:10.1109/TPAMI.2022.3181973
PMID:35984803
Abstract

Glass is very common in our daily life. Existing computer vision systems neglect it and thus may have severe consequences, e.g., a robot may crash into a glass wall. However, sensing the presence of glass is not straightforward. The key challenge is that arbitrary objects/scenes can appear behind the glass. In this paper, we propose an important problem of detecting glass surfaces from a single RGB image. To address this problem, we construct the first large-scale glass detection dataset (GDD) and propose a novel glass detection network, called GDNet-B, which explores abundant contextual cues in a large field-of-view via a novel large-field contextual feature integration (LCFI) module and integrates both high-level and low-level boundary features with a boundary feature enhancement (BFE) module. Extensive experiments demonstrate that our GDNet-B achieves satisfying glass detection results on the images within and beyond the GDD testing set. We further validate the effectiveness and generalization capability of our proposed GDNet-B by applying it to other vision tasks, including mirror segmentation and salient object detection. Finally, we show the potential applications of glass detection and discuss possible future research directions.

摘要

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