Cluttered Environment
Cluttered environment research focuses on enabling robots to navigate, manipulate objects, and perform tasks in complex, obstacle-filled spaces. Current research emphasizes developing robust perception systems (often using convolutional neural networks, transformers, and vision-language models) and efficient planning algorithms (including A*, reinforcement learning, and optimization-based methods) for various robotic platforms, from drones to mobile manipulators. This work is crucial for advancing robotics in diverse fields, including warehouse automation, search and rescue, and assistive technologies, by improving the adaptability and reliability of robots in real-world scenarios. The development of large-scale datasets and standardized benchmarks is also a significant focus, facilitating the comparison and improvement of different approaches.
Papers
MANER: Multi-Agent Neural Rearrangement Planning of Objects in Cluttered Environments
Vivek Gupta, Praphpreet Dhir, Jeegn Dani, Ahmed H. Qureshi
Probabilistic Visibility-Aware Trajectory Planning for Target Tracking in Cluttered Environments
Han Gao, Pengying Wu, Yao Su, Kangjie Zhou, Ji Ma, Hangxin Liu, Chang Liu