2022
DOI: 10.1126/scirobotics.abn1944
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Fully body visual self-modeling of robot morphologies

Abstract: Internal computational models of physical bodies are fundamental to the ability of robots and animals alike to plan and control their actions. These “self-models” allow robots to consider outcomes of multiple possible future actions without trying them out in physical reality. Recent progress in fully data-driven self-modeling has enabled machines to learn their own forward kinematics directly from task-agnostic interaction data. However, forward kinematic models can only predict limited aspects of the morphol… Show more

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Cited by 29 publications
(12 citation statements)
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“…14 represents a valid translation, we introduce a constraint and define the estimated JCP as follows: The estimated JCP of the jth joint is a point rj along the joint axis ζ that is a valid solution to Eq. 14 Because the actual angular acceleration ̇ in Eq. 14 is not measured, numerical differentiation of the IMU-measured angular velocity (denoted ̂ ) is used instead.…”
Section: Body Kinematic Descriptionmentioning
confidence: 99%
See 1 more Smart Citation
“…14 represents a valid translation, we introduce a constraint and define the estimated JCP as follows: The estimated JCP of the jth joint is a point rj along the joint axis ζ that is a valid solution to Eq. 14 Because the actual angular acceleration ̇ in Eq. 14 is not measured, numerical differentiation of the IMU-measured angular velocity (denoted ̂ ) is used instead.…”
Section: Body Kinematic Descriptionmentioning
confidence: 99%
“…Most of the methods in the research literature to learn and adapt the body schema of a robot rely on a visual input source from which the robot can build an understanding of its geometry (9)(10)(11)(12)(13)(14). In contrast, complementary works have explored alternatives to extract body knowledge using the robot's perceptual apparatus to find internal representations (15) and to find and encode sensorimotor maps (16).…”
Section: Introductionmentioning
confidence: 99%
“…Such AI is used in various functions, from voice recognition software like Siri and Alexa to medical diagnosis through pattern recognition techniques [14,15]. Other examples of current AI include FN Meka, an AI rapper signed to Capitol Records and research at Columbia University that taught a robot to visualise itself through AI [16]. Worldwide, governments and organisations are developing frameworks for the development and enactment of AI in daily life.…”
Section: A Multi-industry Analysis Of the Future Use Of Ai Chatbotsmentioning
confidence: 99%
“…With such advantages, neural fields are increasingly being explored and built on for robotics applications like learning policies [27], robot self-models for space occupancy queries [28], room scale online signed distance fields for navigation [29], and learning transformations from demonstrations of a pick-and-place task [30].…”
Section: Neural Representations Of 3d Geometriesmentioning
confidence: 99%