Human Demonstration
Human demonstration is a crucial technique for teaching robots complex tasks, aiming to bridge the gap between intuitive human actions and algorithmic robot control. Current research focuses on improving the efficiency and robustness of learning from demonstrations, employing methods like inverse reinforcement learning, imitation learning with various neural network architectures (e.g., transformers), and techniques to handle noisy or incomplete data, including data augmentation and segment-level selection. This field is significant because it enables robots to learn intricate manipulation skills and adapt to diverse environments without extensive manual programming, impacting robotics, automation, and human-robot interaction.
Papers
ULMA: Unified Language Model Alignment with Human Demonstration and Point-wise Preference
Tianchi Cai, Xierui Song, Jiyan Jiang, Fei Teng, Jinjie Gu, Guannan Zhang
Human Demonstrations are Generalizable Knowledge for Robots
Te Cui, Guangyan Chen, Tianxing Zhou, Zicai Peng, Mengxiao Hu, Haoyang Lu, Haizhou Li, Meiling Wang, Yi Yang, Yufeng Yue
BEDD: The MineRL BASALT Evaluation and Demonstrations Dataset for Training and Benchmarking Agents that Solve Fuzzy Tasks
Stephanie Milani, Anssi Kanervisto, Karolis Ramanauskas, Sander Schulhoff, Brandon Houghton, Rohin Shah