[1] |
YANG T, ZOU H B, LIU X Y, et al. Simulated research on synchronization control of humanoid manipulator [J]. Computer Simulation, 2019, 36(7): 302-307 (in Chinese).
|
[2] |
PANDEY A K, GELIN R. A mass-produced sociable humanoid robot: Pepper: the first machine of its kind [J]. IEEE Robotics & Automation Magazine, 2018, 25(3): 40-48.
|
[3] |
OKITA S Y, NG-THOW-HING V, SARVADEVABHATLA R. Learning together: ASIMO developing an interactive learning partnership with children [C]//RO-MAN 2009—The 18th IEEE International Symposium on Robot and Human Interactive Communication. Toyama, Japan: IEEE, 2009: 1125-1130.
|
[4] |
LV H H, YANG G, ZHOU H Y, et al. Teleoperation of collaborative robot for remote dementia care in home environments [J]. IEEE Journal of Translational Engineering in Health and Medicine, 2020, 8: 1400510.
|
[5] |
ACKERMAN E. UBTECH shows off massive upgrades to Walker humanoid robot [EB/OL]. (2019-01- 08). https: // spectrum.ieee.org/automaton/robotics/ humanoids/ubtech-upgrades-Walker-humanoid-robot.
|
[6] |
BAKERW, KINGSTON Z, MOLL M, et al. Robonaut 2 and You: Specifying and executing complex operations [C]//2017 IEEE Workshop on Advanced Robotics and its Social Impacts. Austin, TX, USA: IEEE, 2017: 1-8.
|
[7] |
SCHMAUS P, LEIDNER D, KR¨UGER T, et al. Preliminary insights from the METERON SUPVIS Justin space-robotics experiment [J]. IEEE Robotics and Automation Letters, 2018, 3(4): 3836-3843.
|
[8] |
HUO F C, CHI J, HUANG Z J, et al. Review of path planning for mobile robots [J]. Journal of Jilin University (Information Science Edition), 2018, 36(6): 639- 647 (in Chinese).
|
[9] |
CHEN Q L, JIANG H Y, ZHENG Y J. Summary of rapidly-exploring random tree algorithm in robot path planning [J]. Computer Engineering and Applications, 2019, 55(16): 10-17 (in Chinese).
|
[10] |
KHATIB O. Real-time obstacle avoidance for manipulators and mobile robots [J]. The International Journal of Robotics Research, 1986, 5(1): 90-98.
|
[11] |
GAI S N, SUN R, CHEN S J, et al. 6-DOF robotic obstacle avoidance path planning based on artificial potential field method [C]//2019 16th International Conference on Ubiquitous Robots. Jeju, Korea: IEEE, 2019: 165-168.
|
[12] |
QI R L, ZHOU W J, WANG T J. An obstacle avoidance trajectory planning scheme for space manipulators based on genetic algorithm [J]. Robot, 2014, 36(3): 263-270 (in Chinese).
|
[13] |
WU C J, ZHOU S J, XIAO L C. Dynamic path planning based on improved ant colony algorithm in traffic congestion [J]. IEEE Access, 2020, 8: 180773-180783.
|
[14] |
LI F, JIANG Q, QUANW, et al. Manipulation skill acquisition for robotic assembly using deep reinforcement learning [C]//2019 IEEE/ASME International Conference on Advanced Intelligent Mechatronics. Hong Kong, China: IEEE, 2019: 13-18.
|
[15] |
KAMALI K, BONEV I A, DESROSIERS C. Realtime motion planning for robotic teleoperation using dynamic-goal deep reinforcement learning [C]//2020 17th Conference on Computer and Robot Vision. Ottawa, Canada: IEEE, 2020: 182-189.
|
[16] |
RAVANKAR A A, RAVANKAR A, EMARU T, et al. HPPRM: hybrid potential based probabilistic roadmap algorithm for improved dynamic path planning of mobile robots [J]. IEEE Access, 2020, 8: 221743-221766.
|
[17] |
SIMONIN E, DIARD J. BBPRM: a behavior-based probabilistic roadmap method [C]//2008 IEEE International Conference on Systems, Man and Cybernetics. Singapore: IEEE, 2008: 1719-1724.
|
[18] |
LAVALLE S M . Rapidly-exploring random trees: A new tool for path planning [EB/OL]. [2021-05-18]. https://www.cs.csustan.edu/~xliang/Courses/CS4710- 21S/Papers/06%20RRT.pdf.
|
[19] |
SUN F C, ZHANG Y N, SHI X H. Improved rapidly-exploring random tree path planning algorithm [J]. Transducer and Microsystem Technologies, 2017, 36(9): 129-131 (in Chinese).
|
[20] |
KUFFNER J J, LAVALLE S M. RRT-connect: An efficient approach to single-query path planning [C]//IEEE International Conference on Robotics and Automation. San Francisco, CA, USA: IEEE, 2000: 995-1001.
|
[21] |
KARAMAN S, FRAZZOLI E. Incremental samplingbased algorithms for optimal motion planning [M]//Robotics: Science and systems VI. Cambridge, MA, USA: MIT Press, 2011.
|
[22] |
KARAMAN S, FRAZZOLI E. Sampling-based algorithms for optimal motion planning [J]. The International Journal of Robotics Research, 2011, 30(7):846- 894.
|
[23] |
GAMMELL J D, SRINIVASA S S, BARFOOT T D. Informed RRT*: Optimal sampling-based path planning focused via direct sampling of an admissible ellipsoidal heuristic [C]//2014 IEEE/RSJ International Conference on Intelligent Robots and Systems. Chicago, IL, USA: IEEE, 2014: 2997-3004.
|
[24] |
LIU J Y, FAN P Q. Path planning of manipulator based on improved RRT*-connect algorithm [J]. Computer Engineering and Applications, 2021, 57(6): 274- 278 (in Chinese).
|
[25] |
LIU Y L, ZUO G Y. Improved RRT path planning algorithm for humanoid robotic arm [C]//2020 Chinese Control and Decision Conference. Hefei, China: IEEE, 2020: 397-402.
|
[26] |
BORDALBA R, ROS L, PORTA J M. A randomized kinodynamic planner for closed-chain robotic systems [J]. IEEE Transactions on Robotics, 2021, 37(1): 99- 115.
|