Unseen Object Instance Segmentation with Fully Test-time RGB-D Embeddings Adaptation
Lu Zhang; Siqi Zhang; Xu Yang; Hong Qiao; Zhiyong Li
2023-05
会议日期May 29 - June 2, 2023
会议地点London, UK
英文摘要

Segmenting unseen objects is a crucial ability for the robot since it may encounter new environments during the operation. Recently, a popular solution is leveraging RGB-D features of large-scale synthetic data and directly applying the model to unseen real-world scenarios. However, the domain shift caused by the sim2real gap is inevitable, posing a crucial challenge to the segmentation model. In this paper, we em-phasize the adaptation process across sim2real domains and model it as a learning problem on the BatchNorm param-eters of a simulation-trained model. Specifically, we propose a novel non-parametric entropy objective, which formulates the learning objective for the test-time adaptation in an open-world manner. Then, a cross-modality knowledge distillation objective is further designed to encourage the test-time knowledge transfer for feature enhancement. Our approach can be efficiently implemented with only test images, without requiring annotations or revisiting the large-scale synthetic training data. Besides significant time savings, the proposed method consistently improves segmentation results on the overlap and boundary metrics, achieving state-of-the-art performance on unseen object instance segmentation.

会议录出版者IEEE
语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/57277]  
专题多模态人工智能系统全国重点实验室
通讯作者Zhiyong Li
作者单位State Key Laboratory of Multimodal Artifi cial In- telligence Systems, Institute of Automation, Chinese Academy of Sciences
推荐引用方式
GB/T 7714
Lu Zhang,Siqi Zhang,Xu Yang,et al. Unseen Object Instance Segmentation with Fully Test-time RGB-D Embeddings Adaptation[C]. 见:. London, UK. May 29 - June 2, 2023.
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