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arxiv 2311.01540 v1 pith:MMFTQZDF submitted 2023-11-02 cs.RO cs.AI

Open-Set Object Recognition Using Mechanical Properties During Interaction

classification cs.RO cs.AI
keywords objectsclusteringalgorithmframeworkmechanicalopen-setpropertiesbetter
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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while most of the tactile robots are operated in close-set conditions, it is challenging for them to operate in open-set conditions where test objects are beyond the robots' knowledge. We proposed an open-set recognition framework using mechanical properties to recongise known objects and incrementally label novel objects. The main contribution is a clustering algorithm that exploits knowledge of known objects to estimate cluster centre and sizes, unlike a typical algorithm that randomly selects them. The framework is validated with the mechanical properties estimated from a real object during interaction. The results show that the framework could recognise objects better than alternative methods contributed by the novelty detector. Importantly, our clustering algorithm yields better clustering performance than other methods. Furthermore, the hyperparameters studies show that cluster size is important to clustering results and needed to be tuned properly.

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