ShapeMask: Learning to Segment Novel Objects by Refining Shape Priors

Type: Article

Publication Date: 2019-10-01

Citations: 117

DOI: https://doi.org/10.1109/iccv.2019.00930

Abstract

Instance segmentation aims to detect and segment individual objects in a scene. Most existing methods rely on precise mask annotations of every category. However, it is difficult and costly to segment objects in novel categories because a large number of mask annotations is required. We introduce ShapeMask, which learns the intermediate concept of object shape to address the problem of generalization in instance segmentation to novel categories. ShapeMask starts with a bounding box detection and gradually refines it by first estimating the shape of the detected object through a collection of shape priors. Next, ShapeMask refines the coarse shape into an instance level mask by learning instance embeddings. The shape priors provide a strong cue for object-like prediction, and the instance embeddings model the instance specific appearance information. ShapeMask significantly outperforms the state-of-the-art by 6.4 and 3.8 AP when learning across categories, and obtains competitive performance in the fully supervised setting. It is also robust to inaccurate detections, decreased model capacity, and small training data. Moreover, it runs efficiently with 150ms inference time on a GPU and trains within 11 hours on TPUs. With a larger backbone model, ShapeMask increases the gap with state-of-the-art to 9.4 and 6.2 AP across categories. Code will be publicly available at: https://sites.google.com/view/shapemask/home.

Locations

  • arXiv (Cornell University) - View - PDF
  • 2021 IEEE/CVF International Conference on Computer Vision (ICCV) - View

Similar Works

Action Title Year Authors
+ ShapeMask: Learning to Segment Novel Objects by Refining Shape Priors 2019 Weicheng Kuo
Anelia Angelova
Jitendra Malik
Tsung-Yi Lin
+ Commonality-Parsing Network across Shape and Appearance for Partially Supervised Instance Segmentation 2020 Qi Fan
Lei Ke
Wenjie Pei
Chi-Keung Tang
Yu‐Wing Tai
+ FreeSOLO: Learning to Segment Objects without Annotations 2022 Xinlong Wang
Zhiding Yu
Shalini De Mello
Jan Kautz
Anima Anandkumar
Chunhua Shen
José M. Álvarez
+ PDF Chat Adapting Pre-Trained Vision Models for Novel Instance Detection and Segmentation 2024 Yangxiao Lu
Jishnu Jaykumar P
Yunhui Guo
Nicholas Ruozzi
Xiang Yu
+ SOLOv2: Dynamic and Fast Instance Segmentation 2020 Xinlong Wang
Rufeng Zhang
Tao Kong
Lei Li
Chunhua Shen
+ Learning with Free Object Segments for Long-Tailed Instance Segmentation 2022 Cheng Zhang
Tai-Yu Pan
Tianle Chen
Jike Zhong
Wenjin Fu
Wei‐Lun Chao
+ Straight to Shapes++: Real-time Instance Segmentation Made More Accurate 2019 Laurynas Miksys
Saumya Jetley
Michael Sapienza
Stuart Golodetz
Philip H. S. Torr
+ SIM: Semantic-aware Instance Mask Generation for Box-Supervised Instance Segmentation 2023 Ruihuang Li
Chenhang He
Yabin Zhang
Shuai Li
Liyi Chen
Lei Zhang
+ PDF Chat FreeSOLO: Learning to Segment Objects without Annotations 2022 Xinlong Wang
Zhiding Yu
Shalini De Mello
Jan Kautz
Anima Anandkumar
Chunhua Shen
Jose M. Álvarez
+ SOLOv2: Dynamic, Faster and Stronger. 2020 Xinlong Wang
Rufeng Zhang
Tao Kong
Lei Li
Chunhua Shen
+ ISDA: Position-Aware Instance Segmentation with Deformable Attention 2022 Kaining Ying
Zhenhua Wang
Cong Bai
Pengfei Zhou
+ PDF Chat ISDA: Position-Aware Instance Segmentation with Deformable Attention 2022 Kaining Ying
Zhenhua Wang
Cong Bai
Pengfei Zhou
+ Open3DIS: Open-vocabulary 3D Instance Segmentation with 2D Mask Guidance 2023 Phuc D. A. Nguyen
Tuan Ngo
Chuang Gan
Evangelos Kalogerakis
Anh Tran
Cuong Hung Pham
Khoi Nguyen
+ PDF Chat SIM: Semantic-aware Instance Mask Generation for Box-Supervised Instance Segmentation 2023 Ruihuang Li
Chenhang He
Yabin Zhang
Shuai Li
Liyi Chen
Lei Zhang
+ Boundary-aware Instance Segmentation 2016 Zeeshan Hayder
Xuming He
Mathieu Salzmann
+ Boundary-aware Instance Segmentation 2016 Zeeshan Hayder
Xuming He
Mathieu Salzmann
+ PDF Chat ContrastMask: Contrastive Learning to Segment Every Thing 2022 Xuehui Wang
Kai Zhao
Ruixin Zhang
Shouhong Ding
Yan Wang
Wei Shen
+ ContrastMask: Contrastive Learning to Segment Every Thing 2022 Xuehui Wang
Kai Zhao
Ruixin Zhang
Shouhong Ding
Yan Wang
Wei Shen
+ Learning to Group: A Bottom-Up Framework for 3D Part Discovery in Unseen Categories 2020 Tiange Luo
Kaichun Mo
Zhiao Huang
Siyu Hu
Jiarui Xu
Liwei Wang
Hao Su
+ PDF Chat Learning to Group: A Bottom-Up Framework for 3D Part Discovery in Unseen Categories 2020 Tiange Luo
Kaichun Mo
Zhiao Huang
Jiarui Xu
Siyu Hu
Liwei Wang
Hao Su