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Autores principales: Chikhalikar, Akash, Ravankar, Ankit A., Luces, Jose Victorio Salazar, Hirata, Yasuhisa
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2506.14422
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author Chikhalikar, Akash
Ravankar, Ankit A.
Luces, Jose Victorio Salazar
Hirata, Yasuhisa
author_facet Chikhalikar, Akash
Ravankar, Ankit A.
Luces, Jose Victorio Salazar
Hirata, Yasuhisa
contents Personalization is critical for the advancement of service robots. Robots need to develop tailored understandings of the environments they are put in. Moreover, they need to be aware of changes in the environment to facilitate long-term deployment. Long-term understanding as well as personalization is necessary to execute complex tasks like prepare dinner table or tidy my room. A precursor to such tasks is that of Object Search. Consequently, this paper focuses on locating and searching multiple objects in indoor environments. In this paper, we propose two crucial novelties. Firstly, we propose a novel framework that can enable robots to deduce Personalized Ontologies of indoor environments. Our framework consists of a personalization schema that enables the robot to tune its understanding of ontologies. Secondly, we propose an Adaptive Inferencing strategy. We integrate Dynamic Belief Updates into our approach which improves performance in multi-object search tasks. The cumulative effect of personalization and adaptive inferencing is an improved capability in long-term object search. This framework is implemented on top of a multi-layered semantic map. We conduct experiments in real environments and compare our results against various state-of-the-art (SOTA) methods to demonstrate the effectiveness of our approach. Additionally, we show that personalization can act as a catalyst to enhance the performance of SOTAs. Video Link: https://bit.ly/3WHk9i9
format Preprint
id arxiv_https___arxiv_org_abs_2506_14422
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing Object Search in Indoor Spaces via Personalized Object-factored Ontologies
Chikhalikar, Akash
Ravankar, Ankit A.
Luces, Jose Victorio Salazar
Hirata, Yasuhisa
Robotics
Personalization is critical for the advancement of service robots. Robots need to develop tailored understandings of the environments they are put in. Moreover, they need to be aware of changes in the environment to facilitate long-term deployment. Long-term understanding as well as personalization is necessary to execute complex tasks like prepare dinner table or tidy my room. A precursor to such tasks is that of Object Search. Consequently, this paper focuses on locating and searching multiple objects in indoor environments. In this paper, we propose two crucial novelties. Firstly, we propose a novel framework that can enable robots to deduce Personalized Ontologies of indoor environments. Our framework consists of a personalization schema that enables the robot to tune its understanding of ontologies. Secondly, we propose an Adaptive Inferencing strategy. We integrate Dynamic Belief Updates into our approach which improves performance in multi-object search tasks. The cumulative effect of personalization and adaptive inferencing is an improved capability in long-term object search. This framework is implemented on top of a multi-layered semantic map. We conduct experiments in real environments and compare our results against various state-of-the-art (SOTA) methods to demonstrate the effectiveness of our approach. Additionally, we show that personalization can act as a catalyst to enhance the performance of SOTAs. Video Link: https://bit.ly/3WHk9i9
title Enhancing Object Search in Indoor Spaces via Personalized Object-factored Ontologies
topic Robotics
url https://arxiv.org/abs/2506.14422