International Journal of Advanced Robotic Systems | |
Explicit feature disentanglement for visual place recognition across appearance changes | |
article | |
Li Tang1  Yue Wang1  Qimeng Tan2  Rong Xiong1  | |
[1] Department of Control Science and Engineering, Zhejiang University;Beijing Key Laboratory of Intelligent Space Robotic System Technology and Applications, Beijing Institute of Spacecraft System Engineering | |
关键词: Place recognition; feature disentanglement; adversarial; self-supervised; changing appearance; | |
DOI : 10.1177/17298814211037497 | |
学科分类:社会科学、人文和艺术(综合) | |
来源: InTech | |
【 摘 要 】
In the long-term deployment of mobile robots, changing appearance brings challenges for localization. When a robot travels to the same place or restarts from an existing map, global localization is needed, where place recognition provides coarse position information. For visual sensors, changing appearances such as the transition from day to night and seasonal variation can reduce the performance of a visual place recognition system. To address this problem, we propose to learn domain-unrelated features across extreme changing appearance, where a domain denotes a specific appearance condition, such as a season or a kind of weather. We use an adversarial network with two discriminators to disentangle domain-related features and domain-unrelated features from images, and the domain-unrelated features are used as descriptors in place recognition. Provided images from different domains, our network is trained in a self-supervised manner which does not require correspondences between these domains. Besides, our feature extractors are shared among all domains, making it possible to contain more appearance without increasing model complexity. Qualitative and quantitative results on two toy cases are presented to show that our network can disentangle domain-related and domain-unrelated features from given data. Experiments on three public datasets and one proposed dataset for visual place recognition are conducted to illustrate the performance of our method compared with several typical algorithms. Besides, an ablation study is designed to validate the effectiveness of the introduced discriminators in our network. Additionally, we use a four-domain dataset to verify that the network can extend to multiple domains with one model while achieving similar performance.
【 授权许可】
CC BY
【 预 览 】
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