AI RESEARCH
Think as Needed: Geometry-Driven Adaptive Perception for Autonomous Driving
arXiv CS.AI
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ArXi:2605.10117v1 Announce Type: cross Autonomous driving scenes range from empty highways to dense intersections with dozens of interacting road users, yet current 3D detection models apply a fixed computation budget to every frame, wasting resources on simple scenes while lacking capacity for complex ones. Existing approaches compound this problem: Transformer-based interaction models scale quadratically with the number of detected objects, and frame-by-frame processing causes the system to immediately forget objects the moment they become occluded.