Please use this identifier to cite or link to this item: http://elea.unisa.it/xmlui/handle/10556/7325
Title: Social Robots, from intelligent perception to emphatic behaviors
Authors: Roberto, Antonio
Chiacchio, Pasquale
Vento, Mario
Keywords: Social robots;Deep learning
Issue Date: 15-Mar-2023
Publisher: Universita degli studi di Salerno
Abstract: Social robots are a particular category of robots able to perceive in- formation about the environment to reason about the acquired infor- mation with the particular aim to interact with humans. Remarkable applications of social robots include museum guides, nurses, autism treatment, hotel assistants, and elderly care. Studies prove that the capability of social robots to personalize the conversation and perceive the interlocutor’s emotions are the key behaviours that allow them to be considered emphatic. To these purposes, social robots rely on multiple sensory modali- ties to acquire information about their interlocutor robustly and ac- curately. Their sensorial equipment is crucial considering that this kind of robot commonly works in challenging environments e.g., dy- namic lighting conditions and loud environmental noise. In addition to these challenges, social robots must converse in real-time with hu- mans to give them the feeling of natural interaction. Considering the application context, this result is only possible if the computation is performed on board of the social robot platform, which makes the task harder due to the implicit computational and power constraints. This thesis tackles these requirements in the context of Deep Learn- ing. In particular, a novel software architecture optimized for multi- modal real-time interactions has been proposed as a general-purpose solution for social robots. The realization of a robotic prototype al- iii lowed to identify the main issues perceived by humans about state-of- the-art algorithms related to human-robot interaction when deployed together in a real application. In light of this result, this thesis ad- vances the state-of-the-art by proposing and validating novel auditory and natural language understanding algorithms optimized to be exe- cuted on robotic embedded systems while keeping high accuracy. The proposed social robot architecture includes all the software modules that allow to meet the main requirements of a social robot: first, a dialogue manager able to personalize the human-robot inter- action by exploiting the biometrics perceived by the sensors of the social robot; second, a multimodal sensor aggregation module able to exploits the information acquired by different types of sensors to in- crease the robustness to environmental noise; finally, parallel process- ing pipelines that, properly designed and implemented, ensure real- time performance. A social robot prototype based on the proposed architecture has been realized and deployed in the SICUREZZA ex- hibition for three days. 161 people who interacted with the robot evaluated their experience by answering 5 questions with a score be- tween 1 and 5. The maximum score was achieved for more than 40% of the answers and the average rate was between 4 and 5. This result acquires more relevance considering that the people who attended the conference were technically skilled and, therefore, their feedback is re- liable. The survey also allowed to investigate the feeling of humans about the performance of the state-of-art algorithms available on the proposed prototype. This analysis results in the need for audio algo- rithms more robust to environmental noise and more efficient human utterances processing pipelines. [...] [edited by Author]
Description: 2021 - 2022
URI: http://elea.unisa.it/xmlui/handle/10556/7325
Appears in Collections:Ingegneria dell'Informazione

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tesi di dottorato A. Roberto.pdftesi di dottorato9,23 MBAdobe PDFView/Open
abstract in italiano e in inglese A. Roberto.pdfabstract a cura dell’autore (versione italiana e inglese)209,7 kBAdobe PDFView/Open


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