March 27, 2024, 6:37 p.m. | Alex McFarland

Unite.AI www.unite.ai

Household robots are increasingly being taught to perform complex tasks through imitation learning, a process in which they are programmed to copy the motions demonstrated by a human. While robots have proven to be excellent mimics, they often struggle to adjust to disruptions or unexpected situations encountered during task execution. Without explicit programming to handle […]


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