Xinggang Wang

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Paper Publications

Weakly-Supervised Semantic Segmentation Network with Deep Seeded Region Growing
Release time:2021-06-10  Hits:

Indexed by:会议论文
First Author:Huang,Zilong
Correspondence Author:Wang,Wang,Xinggang
Co-author:Wang,Jingdong,Liu,Wenyu,Wang,Jiasi
Journal:2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
Date of Publication:2018-06-18
Abstract:This paper studies the problem of learning image semantic segmentation networks only using image-level labels as supervision, which is important since it can significantly reduce human annotation efforts. Recent state-of-the-art methods on this problem first infer the sparse and discriminative regions for each object class using a deep classification network, then train semantic a segmentation network using the discriminative regions as supervision. Inspired by the traditional image segmentation methods of seeded region growing, we propose to train a semantic segmentation network starting from the discriminative regions and progressively increase the pixel-level supervision using by seeded region growing. The seeded region growing module is integrated in a deep segmentation network and can benefit from deep features. Different from conventional deep networks which have fixed/static labels, the proposed weakly-supervised network generates new labels using the contextual information within an image. The proposed method significantly outperforms the weakly-supervised semantic segmentation methods using static labels, and obtains the state-of-the-art performance, which are 63.2% mIoU score on the PASCAL VOC 2012 test set and 26.0% mIoU score on the COCO dataset.