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Main Authors: Qin, Xiaolin, Liu, Jiacen, Wang, Qianlei, Zhang, Shaolin, Zhu, Fei, Yi, Zhang
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.09459
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author Qin, Xiaolin
Liu, Jiacen
Wang, Qianlei
Zhang, Shaolin
Zhu, Fei
Yi, Zhang
author_facet Qin, Xiaolin
Liu, Jiacen
Wang, Qianlei
Zhang, Shaolin
Zhu, Fei
Yi, Zhang
contents Glass largely blurs the boundary between the real world and the reflection. The special transmittance and reflectance quality have confused the semantic tasks related to machine vision. Therefore, how to clear the boundary built by glass, and avoid over-capturing features as false positive information in deep structure, matters for constraining the segmentation of reflection surface and penetrating glass. We proposed the Fourier Boundary Features Network with Wider Catchers (FBWC), which might be the first attempt to utilize sufficiently wide horizontal shallow branches without vertical deepening for guiding the fine granularity segmentation boundary through primary glass semantic information. Specifically, we designed the Wider Coarse-Catchers (WCC) for anchoring large area segmentation and reducing excessive extraction from a structural perspective. We embed fine-grained features by Cross Transpose Attention (CTA), which is introduced to avoid the incomplete area within the boundary caused by reflection noise. For excavating glass features and balancing high-low layers context, a learnable Fourier Convolution Controller (FCC) is proposed to regulate information integration robustly. The proposed method has been validated on three different public glass segmentation datasets. Experimental results reveal that the proposed method yields better segmentation performance compared with the state-of-the-art (SOTA) methods in glass image segmentation.
format Preprint
id arxiv_https___arxiv_org_abs_2405_09459
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fourier Boundary Features Network with Wider Catchers for Glass Segmentation
Qin, Xiaolin
Liu, Jiacen
Wang, Qianlei
Zhang, Shaolin
Zhu, Fei
Yi, Zhang
Computer Vision and Pattern Recognition
Artificial Intelligence
Glass largely blurs the boundary between the real world and the reflection. The special transmittance and reflectance quality have confused the semantic tasks related to machine vision. Therefore, how to clear the boundary built by glass, and avoid over-capturing features as false positive information in deep structure, matters for constraining the segmentation of reflection surface and penetrating glass. We proposed the Fourier Boundary Features Network with Wider Catchers (FBWC), which might be the first attempt to utilize sufficiently wide horizontal shallow branches without vertical deepening for guiding the fine granularity segmentation boundary through primary glass semantic information. Specifically, we designed the Wider Coarse-Catchers (WCC) for anchoring large area segmentation and reducing excessive extraction from a structural perspective. We embed fine-grained features by Cross Transpose Attention (CTA), which is introduced to avoid the incomplete area within the boundary caused by reflection noise. For excavating glass features and balancing high-low layers context, a learnable Fourier Convolution Controller (FCC) is proposed to regulate information integration robustly. The proposed method has been validated on three different public glass segmentation datasets. Experimental results reveal that the proposed method yields better segmentation performance compared with the state-of-the-art (SOTA) methods in glass image segmentation.
title Fourier Boundary Features Network with Wider Catchers for Glass Segmentation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2405.09459