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Main Authors: Que, Haohua, Pan, Wenbin, Xu, Jie, Luo, Hao, Wang, Pei, Zhang, Li
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.17250
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author Que, Haohua
Pan, Wenbin
Xu, Jie
Luo, Hao
Wang, Pei
Zhang, Li
author_facet Que, Haohua
Pan, Wenbin
Xu, Jie
Luo, Hao
Wang, Pei
Zhang, Li
contents In recent years, various intelligent autonomous robots have begun to appear in daily life and production. Desktop-level robots are characterized by their flexible deployment, rapid response, and suitability for light workload environments. In order to meet the current societal demand for service robot technology, this study proposes using a miniaturized desktop-level robot (by ROS) as a carrier, locally deploying a natural language model (NLP-BERT), and integrating visual recognition (CV-YOLO) and speech recognition technology (ASR-Whisper) as inputs to achieve autonomous decision-making and rational action by the desktop robot. Three comprehensive experiments were designed to validate the robotic arm, and the results demonstrate excellent performance using this approach across all three experiments. In Task 1, the execution rates for speech recognition and action performance were 92.6% and 84.3%, respectively. In Task 2, the highest execution rates under the given conditions reached 92.1% and 84.6%, while in Task 3, the highest execution rates were 95.2% and 80.8%, respectively. Therefore, it can be concluded that the proposed solution integrating ASR, NLP, and other technologies on edge devices is feasible and provides a technical and engineering foundation for realizing multimodal desktop-level robots.
format Preprint
id arxiv_https___arxiv_org_abs_2405_17250
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle "Pass the butter": A study on desktop-classic multitasking robotic arm based on advanced YOLOv7 and BERT
Que, Haohua
Pan, Wenbin
Xu, Jie
Luo, Hao
Wang, Pei
Zhang, Li
Robotics
Systems and Control
In recent years, various intelligent autonomous robots have begun to appear in daily life and production. Desktop-level robots are characterized by their flexible deployment, rapid response, and suitability for light workload environments. In order to meet the current societal demand for service robot technology, this study proposes using a miniaturized desktop-level robot (by ROS) as a carrier, locally deploying a natural language model (NLP-BERT), and integrating visual recognition (CV-YOLO) and speech recognition technology (ASR-Whisper) as inputs to achieve autonomous decision-making and rational action by the desktop robot. Three comprehensive experiments were designed to validate the robotic arm, and the results demonstrate excellent performance using this approach across all three experiments. In Task 1, the execution rates for speech recognition and action performance were 92.6% and 84.3%, respectively. In Task 2, the highest execution rates under the given conditions reached 92.1% and 84.6%, while in Task 3, the highest execution rates were 95.2% and 80.8%, respectively. Therefore, it can be concluded that the proposed solution integrating ASR, NLP, and other technologies on edge devices is feasible and provides a technical and engineering foundation for realizing multimodal desktop-level robots.
title "Pass the butter": A study on desktop-classic multitasking robotic arm based on advanced YOLOv7 and BERT
topic Robotics
Systems and Control
url https://arxiv.org/abs/2405.17250