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UniFS: Universal Few-shot Instance Perception with Point Representations

Authors :
Jin, Sheng
Yao, Ruijie
Xu, Lumin
Liu, Wentao
Qian, Chen
Wu, Ji
Luo, Ping
Publication Year :
2024

Abstract

Instance perception tasks (object detection, instance segmentation, pose estimation, counting) play a key role in industrial applications of visual models. As supervised learning methods suffer from high labeling cost, few-shot learning methods which effectively learn from a limited number of labeled examples are desired. Existing few-shot learning methods primarily focus on a restricted set of tasks, presumably due to the challenges involved in designing a generic model capable of representing diverse tasks in a unified manner. In this paper, we propose UniFS, a universal few-shot instance perception model that unifies a wide range of instance perception tasks by reformulating them into a dynamic point representation learning framework. Additionally, we propose Structure-Aware Point Learning (SAPL) to exploit the higher-order structural relationship among points to further enhance representation learning. Our approach makes minimal assumptions about the tasks, yet it achieves competitive results compared to highly specialized and well optimized specialist models. Codes and data are available at https://github.com/jin-s13/UniFS.<br />Comment: Accepted by ECCV 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.19401
Document Type :
Working Paper