Xinggang Wang

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Paper Publications

Weakly-supervised Instance Segmentation via Class-agnostic Learning with Salient Images
Release time:2021-06-10  Hits:

Indexed by:会议论文
First Author:Wang,Xinggang
Correspondence Author:Liu,Wenyu
Co-author:Chen,Xiaoxin,Ran,Longjin,Ding,Qi,Hu,Bin,Feng,Jiapei
Journal:2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)
Abstract:Humans have a strong class-agnostic object segmentation ability and can outline boundaries of unknown objects precisely, which motivates us to propose a box-supervised class-agnostic object segmentation (BoxCaseg) based solution for weakly-supervised instance segmentation. The BoxCaseg model is jointly trained using box-supervised images and salient images in a multi-task learning manner. The fine-annotated salient images provide class-agnostic and precise object localization guidance for box-supervised images. The object masks predicted by a pretrained BoxCaseg model are refined via a novel merged and dropped strategy as proxy ground truth to train a Mask R-CNN for weakly-supervised instance segmentation. Only using 7991 salient images, the weakly-supervised Mask R-CNN is on par with fully-supervised Mask R-CNN on PASCAL VOC and significantly outperforms previous state-of-the-art boxsupervised instance segmentation methods on COCO. The source code, pretrained models and datasets are available at https://github.com/hustvl/BoxCaseg.