2021
DOI: 10.1109/tcds.2020.3005907
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Learning Bodily Expression of Emotion for Social Robots Through Human Interaction

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Cited by 13 publications
(3 citation statements)
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References 48 publications
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“…The actual developmental level characterizes mental development retrospectively, while the Zone of Proximal Development characterizes mental development prospectively. For example, we may quote a representative list of studies in the two preceding decades that cover in isolation some of the specific issues of developmental robotics: Self-exploration and early imitation (Kuniyoshi et al, 2003), Modeling joint attention (Nagai, 2007), Scaffolding Robot Action Learning (Nagai and Rohlfing, 2009), Affordance-based perception (Min et al, 2016), Bootstrapping the semantics of tools (Schoeler and Wörgötter, 2016), Perception of Localized Features (Giagkos et al, 2017), Bootstrapping of Sensory-Motor Skills (Wieser and Cheng, 2018), Developing Reaching Ability like human infants (Luo et al, 2018), Sensorimotor Communication (Donnarumma et al, 2012(Donnarumma et al, , 2018Pezzulo et al, 2019), Integration of Sensing, Cognition, Learning, and Control (Li et al, 2019), Evaluation of Internal Models (Smith and Herrmann, 2019), Emergence of symbolic representations (Ugur et al, 2015;Taniguchi et al, 2019), Grounded affordances (Saponaro et al, 2020), Bodily Expression of Emotion (Tuyen et al, 2021), Morphological development (Naya-Varela et al, 2021), Skill Learning Strategy with Dynamic Motion Primitives (Li et al, 2021), Interest-driven exploration (Rayyes et al, 2022(Rayyes et al, , 2023.…”
Section: Principles Of Developmental Roboticsmentioning
confidence: 99%
“…The actual developmental level characterizes mental development retrospectively, while the Zone of Proximal Development characterizes mental development prospectively. For example, we may quote a representative list of studies in the two preceding decades that cover in isolation some of the specific issues of developmental robotics: Self-exploration and early imitation (Kuniyoshi et al, 2003), Modeling joint attention (Nagai, 2007), Scaffolding Robot Action Learning (Nagai and Rohlfing, 2009), Affordance-based perception (Min et al, 2016), Bootstrapping the semantics of tools (Schoeler and Wörgötter, 2016), Perception of Localized Features (Giagkos et al, 2017), Bootstrapping of Sensory-Motor Skills (Wieser and Cheng, 2018), Developing Reaching Ability like human infants (Luo et al, 2018), Sensorimotor Communication (Donnarumma et al, 2012(Donnarumma et al, , 2018Pezzulo et al, 2019), Integration of Sensing, Cognition, Learning, and Control (Li et al, 2019), Evaluation of Internal Models (Smith and Herrmann, 2019), Emergence of symbolic representations (Ugur et al, 2015;Taniguchi et al, 2019), Grounded affordances (Saponaro et al, 2020), Bodily Expression of Emotion (Tuyen et al, 2021), Morphological development (Naya-Varela et al, 2021), Skill Learning Strategy with Dynamic Motion Primitives (Li et al, 2021), Interest-driven exploration (Rayyes et al, 2022(Rayyes et al, , 2023.…”
Section: Principles Of Developmental Roboticsmentioning
confidence: 99%
“…Their results showed that the pattern of reactions to humans was more VOLUME , 2022 favorable for anthropomorphic robots than for mechanistic robots. Tuyen et al [45] designed emotional bodily expressions for a robot that adopts the user's emotional gestures. They proposed an action selection and transformation model that enables the robot to progressively learn from the user's gestures, identify the user's habitual behaviors, and transform the selected behaviors into robot actions.…”
Section: Empathy In Human-robot Interactionmentioning
confidence: 99%
“…In recent years, increasing attention is attracted to 3D human pose estimation in videos, due to its wide application in the field of action recognition [1], robot learning with bodily expression [2], and human-computer interaction [3]. The stateof-the-art approaches [4]- [6] are mostly in two steps, 2D keypoint detection, and 3D pose estimation from the 2D keypoints.…”
Section: Introductionmentioning
confidence: 99%