ROMay 11

ObjView-Bench: Rethinking Difficulty and Deployment for Object-Centric View Planning

arXiv:2605.1070729.7
Predicted impact top 66% in RO · last 90 daysOriginality Incremental advance
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Provides a more realistic evaluation framework for view planning in robotics, addressing the gap between idealized benchmarks and deployment conditions.

ObjView-Bench disentangles object complexity, planning difficulty, budget, and reachability constraints in object-centric view planning, revealing that these factors substantially alter method rankings and failure modes across classical, learned, and hybrid planners.

Object-centric view planning is a core component of active geometric 3D reconstruction in robotics, yet existing evaluations often conflate object complexity, planning difficulty, budget assumptions, and physical reachability constraints. As a result, conclusions drawn from idealized view-planning evaluations may not reliably predict performance under realistic reconstruction settings. We introduce ObjView-Bench, an evaluation framework for rethinking difficulty and deployment in object-centric view planning. First, we disentangle three quantities underlying view-planning evaluation: omnidirectional self-occlusion as an object-side attribute, observation saturation difficulty, and protocol-dependent planning difficulty defined through a set-cover formulation. This separation supports controlled dataset construction, analysis of slow-saturation objects, and a case study showing that planning difficulty-aware sampling can improve learned view planners. Second, we design deployment-oriented evaluation protocols that reveal how budget regimes and reachable-view constraints alter method behavior. Across classical, learned, and hybrid planners, ObjView-Bench shows that difficulty, budget, and reachability constraints substantially change method rankings and failure modes.

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