王兴刚

个人信息Personal Information

教授   博士生导师   硕士生导师  

性别:男

在职信息:在职

所在单位:电子信息与通信学院

学历:研究生(博士)毕业

学位:工学博士学位

毕业院校:华中科技大学

学科:通信与信息系统
信号与信息处理

Boundary-preserving Mask R-CNN

点击次数:

论文类型:会议论文

第一作者:Cheng,Tianheng

通讯作者:Wang,Xinggang

合写作者:Liu,Wenyu,Huang,Lichao

发表刊物:2020 European Conference on Computer Vision(ECCV)

发表时间:2020-08-23

摘要:Tremendous efforts have been made to improve mask localization accuracy in instance segmentation. Modern instance segmentation methods relying on fully convolutional networks perform pixel-wise classification, which ignores object boundaries and shap, leading coarse and indistinct mask prediction results and imprecise localization. To remedy these problems, we propose a conceptually simple yet effective Boundary-preserving Mask R-CNN (BMask R-CNN) to leverage object boundary information to improve mask localization accuracy. BMask R-CNN contains a boundary-preserving mask head in which object boundary and mask are mutually learned via feature fusion blocks. As a result, the predicted masks are better aligned with object boundaries. Without bells and whistles, BMask R-CNN outperforms Mask R-CNN by a considerable margin on the COCO dataset; in the Cityscapes dataset, there are more accurate boundary groundtruths available, so that BMask R-CNN obtains remarkable improvements over Mask R-CNN. Besides, it is not surprising to observe that BMask R-CNN obtains more obvious improvement when the evaluation criterion requires better localization (e.g.., AP 75 ) as shown in Fig. 1. Code and models are available at https://github.com/hustvl/BMaskR-CNN.