Dynamic Grasping
Dynamic grasping, the ability of robots to grasp moving objects, is a rapidly advancing field aiming to improve robotic dexterity and adaptability in complex environments. Current research focuses on developing robust perception systems (often incorporating convolutional neural networks and transformers) for object pose estimation and grasp planning, coupled with reinforcement learning algorithms to optimize grasping strategies in dynamic scenarios. These advancements leverage techniques like active perception, sim-to-real transfer, and multi-modal sensor fusion (including tactile sensing) to achieve higher success rates and generalization to unseen objects and motions, with significant implications for applications in manufacturing, healthcare, and everyday robotics.