The content introduces a novel approach, P-ObjectNav, to address Object Navigation for non-stationary and potentially occluded targets. It presents the formulation, feasibility, and benchmark using memory-enhanced policies. The study compares random and routine-based object placement scenarios, showing improved performance in routine-following environments. Memory-enhanced agents outperform counterparts by over 70%, emphasizing the importance of memory in P-ObjectNav. The study highlights the feasibility of learning object-shifting behaviors in dynamic environments with routine-following placements.
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arxiv.org
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