The key highlights and insights of the content are:
The work addresses the problem of self-localization for robots in unfamiliar workspaces where no annotated training data is available. Existing solutions rely on annotated datasets, which is not feasible in open-world scenarios.
The proposed scheme, called data-free recursive distillation (DFRD), allows a student robot to ask other encountered robots (teachers) for guidance, even if the teacher models are uncooperative, untrainable, or have black-box architectures.
Unlike typical knowledge transfer frameworks, DFRD introduces only minimal assumptions on the teacher models, allowing it to handle various types of open-set teachers.
The core idea is to reconstruct a pseudo-training dataset from the teacher model and use it for continual learning of the student model under domain, class, and vocabulary incremental setups.
The work explores the use of a ranking function as a generic teacher model and investigates its performance in a challenging data-free recursive distillation scenario, where a trained student can recursively join the next-generation open teacher set.
Experiments are conducted on the NCLT dataset, a long-term navigation dataset of a Segway robot, to evaluate the proposed DFRD scheme in a sequential cross-season scenario.
The results show that the DFRD scheme with the proposed ranking function-based input feature can maintain reasonable performance even when the ratio of samples from random samplers is high, indicating its robustness to diverse teacher models.
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