A neurorobotics approach to behaviour selection based on human activity recognition

被引:0
作者
Caetano M. Ranieri
Renan C. Moioli
Patricia A. Vargas
Roseli A. F. Romero
机构
[1] University of Sao Paulo,Institute of Mathematical and Computer Sciences
[2] Federal University of Rio Grande do Norte,Bioinformatics Multidisciplinary Environment (BioME), Digital Metropolis Institute
[3] Heriot-Watt University,Edinburgh Centre for Robotics
来源
Cognitive Neurodynamics | 2023年 / 17卷
关键词
Behaviour selection; Human activity recognition; Robot simulation; Neurorobotics; Bioinspired computational model;
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中图分类号
学科分类号
摘要
Behaviour selection has been an active research topic for robotics, in particular in the field of human–robot interaction. For a robot to interact autonomously and effectively with humans, the coupling between techniques for human activity recognition and robot behaviour selection is of paramount importance. However, most approaches to date consist of deterministic associations between the recognised activities and the robot behaviours, neglecting the uncertainty inherent to sequential predictions in real-time applications. In this paper, we address this gap by presenting an initial neurorobotics model that embeds, in a simulated robot, computational models of parts of the mammalian brain that resembles neurophysiological aspects of the basal ganglia–thalamus–cortex (BG–T–C) circuit, coupled with human activity recognition techniques. A robotics simulation environment was developed for assessing the model, where a mobile robot accomplished tasks by using behaviour selection in accordance with the activity being performed by the inhabitant of an intelligent home. Initial results revealed that the initial neurorobotics model is advantageous, especially considering the coupling between the most accurate activity recognition approaches and the computational models of more complex animals.
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页码:1009 / 1028
页数:19
相关论文
共 251 条
  • [1] Abiri R(2019)A comprehensive review of EEG-based brain-computer interface paradigms J Neural Eng 16 011001-8770
  • [2] Borhani S(2015)Robotic ubiquitous cognitive ecology for smart homes J Intell Robot Syst Theory Appl 20 8757-753
  • [3] Sellers EW(2020)CHARM-deep: continuous human activity recognition model based on deep neural network using IMU sensors of smartwatch IEEE Sens J 49 737-1858
  • [4] Jiang Y(2019)An ambient intelligence approach for learning in smart robotic environments Comput Intell 49 1856-257
  • [5] Zhao X(2018)Exploring the role of striatal D1 and D2 medium spiny neurons in action selection using a virtual robotic framework Eur J Neurosci 8 239-40
  • [6] Amato G(2019)A competitive model for striatal action selection Brain Res 54 1-1379
  • [7] Bacciu D(2005)Privacy perceptions of an aware home with visual sensing devices Proc Hum Factors Ergon Soc Annu Meet 21 1370-17
  • [8] Broxvall M(2017)Exploring the ambient assisted living domain: a systematic review J Ambient Intell Humaniz Comput 4 1-139
  • [9] Chessa S(2021)Deep learning for sensor-based human activity recognition: overview, challenges, and opportunities ACM Comput Surv (CSUR) 8 e44494-641
  • [10] Coleman S(2018)Animal models of neurodegenerative diseases Nat Neurosci 38 110-46