Arbitrary Object
Arbitrary object processing in computer vision aims to develop algorithms capable of understanding, manipulating, and reasoning about objects of any type, regardless of prior knowledge or training data. Current research focuses on developing robust models, often leveraging transformer architectures and diffusion models, to achieve accurate object detection, segmentation, pose estimation, and manipulation in diverse and complex scenes, including those with occlusions and interactions between multiple objects. These advancements are crucial for progress in robotics, autonomous systems, and augmented/virtual reality applications, enabling more flexible and adaptable interactions with the physical world. Furthermore, the development of efficient and generalizable methods for arbitrary object processing is driving innovation in self-supervised learning and knowledge distillation techniques.
Papers
Guided SAM: Label-Efficient Part Segmentation
S.B. van Rooij, G.J. Burghouts
Robust Single Object Tracking in LiDAR Point Clouds under Adverse Weather Conditions
Xiantong Zhao, Xiuping Liu, Shengjing Tian, Yinan Han
Dual Scale-aware Adaptive Masked Knowledge Distillation for Object Detection
ZhouRui Zhang, Jun Li, JiaYan Li, ZhiJian Wu, JianHua Xu
3D Part Segmentation via Geometric Aggregation of 2D Visual Features
Marco Garosi, Riccardo Tedoldi, Davide Boscaini, Massimiliano Mancini, Nicu Sebe, Fabio Poiesi
Supertoroid fitting of objects with holes for robotic grasping and scene generation
Joan Badia Torres, Eric Carmona, Abhijit Makhal, Omid Heidari, Alba Perez Gracia
UNCOVER: Unknown Class Object Detection for Autonomous Vehicles in Real-time
Lars Schmarje, Kaspar Sakman, Reinhard Koch, Dan Zhang