scispace - formally typeset
Search or ask a question
Topic

Humanoid robot

About: Humanoid robot is a research topic. Over the lifetime, 14387 publications have been published within this topic receiving 243674 citations. The topic is also known as: 🤖.


Papers
More filters
Journal ArticleDOI
TL;DR: The task-function approach is extended to handle the full dynamics of the robot multibody along with any constraint written as equality or inequality of the state and control variables to keep a low computation cost.
Abstract: The most widely used technique for generating whole-body motions on a humanoid robot accounting for various tasks and constraints is inverse kinematics. Based on the task-function approach, this class of methods enables the coordination of robot movements to execute several tasks in parallel and account for the sensor feedback in real time, thanks to the low computation cost. To some extent, it also enables us to deal with some of the robot constraints (e.g., joint limits or visibility) and manage the quasi-static balance of the robot. In order to fully use the whole range of possible motions, this paper proposes extending the task-function approach to handle the full dynamics of the robot multibody along with any constraint written as equality or inequality of the state and control variables. The definition of multiple objectives is made possible by ordering them inside a strict hierarchy. Several models of contact with the environment can be implemented in the framework. We propose a reduced formulation of the multiple rigid planar contact that keeps a low computation cost. The efficiency of this approach is illustrated by presenting several multicontact dynamic motions in simulation and on the real HRP-2 robot.

226 citations

Journal ArticleDOI
TL;DR: It is demonstrated that an appropriate feedback controller can be acquired within a few thousand trials by numerical simulations and the controller obtained in numerical simulation achieves stable walking with a physical robot in the real world.
Abstract: In this paper we describe a learning framework for a central pattern generator (CPG)-based biped locomotion controller using a policy gradient method. Our goals in this study are to achieve CPG-based biped walking with a 3D hardware humanoid and to develop an efficient learning algorithm with CPG by reducing the dimensionality of the state space used for learning. We demonstrate that an appropriate feedback controller can be acquired within a few thousand trials by numerical simulations and the controller obtained in numerical simulation achieves stable walking with a physical robot in the real world. Numerical simulations and hardware experiments evaluate the walking velocity and stability. The results suggest that the learning algorithm is capable of adapting to environmental changes. Furthermore, we present an online learning scheme with an initial policy for a hardware robot to improve the controller within 200 iterations.

226 citations

Proceedings Article
01 Jan 2001

225 citations

Proceedings ArticleDOI
06 Jul 2004
TL;DR: The integrated motion control method to make a bipedal humanoid walk, jump and run is proposed based on the concept of the dynamics filter, which assures that the force and the moment generated by the robot can equilibrate with that caused by the environment.
Abstract: This paper proposes the integrated motion control method to make a bipedal humanoid walk, jump and run. This method generates dynamically consistent motion patterns in real-time based on the concept of the dynamics filter, which assures that the force and the moment generated by the robot can equilibrate with that caused by the environment. The validity of the algorithm is verified by the dynamic simulation. The proposed method is applied to the real humanoid "QRIO" under the adaptive controls, and stable walking, jumping and running including the transitions between them are realized.

225 citations

Proceedings Article
05 Dec 2005
TL;DR: An algorithm that uses Gaussian process regression to learn common hidden structure shared between corresponding sets of heterogenous observations can learn the nonlinear mapping between corresponding views of objects, filling in missing data as needed to synthesize novel views.
Abstract: We propose an algorithm that uses Gaussian process regression to learn common hidden structure shared between corresponding sets of heterogenous observations. The observation spaces are linked via a single, reduced-dimensionality latent variable space. We present results from two datasets demonstrating the algorithms's ability to synthesize novel data from learned correspondences. We first show that the method can learn the nonlinear mapping between corresponding views of objects, filling in missing data as needed to synthesize novel views. We then show that the method can learn a mapping between human degrees of freedom and robotic degrees of freedom for a humanoid robot, allowing robotic imitation of human poses from motion capture data.

223 citations


Network Information
Related Topics (5)
Mobile robot
66.7K papers, 1.1M citations
96% related
Robot
103.8K papers, 1.3M citations
95% related
Adaptive control
60.1K papers, 1.2M citations
84% related
Control theory
299.6K papers, 3.1M citations
83% related
Object detection
46.1K papers, 1.3M citations
81% related
Performance
Metrics
No. of papers in the topic in previous years
YearPapers
2023253
2022759
2021573
2020647
2019801
2018921