4.8 Article

Large-Field Contextual Feature Learning for Glass Detection

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2022.3181973

Keywords

Glass; Image segmentation; Feature extraction; Mirrors; Task analysis; Reflection; Object detection; Glass detection; transparent surface; large-field contextual features; boundary cue

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This paper addresses the important problem of detecting glass surfaces from a single RGB image by proposing a novel glass detection network called GDNet-B. The network explores contextual cues and integrates boundary features to achieve satisfying detection results. The effectiveness and generalization capability of GDNet-B are further validated and its potential applications and future research directions are discussed.
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.

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