OA-NBV: Occlusion-Aware Next-Best-View Planning for Human-Centered Active Perception on Mobile Robots
Boxun Hu, Chang Chang, Jiawei Ge, Man Namgung, Xiaomin Lin, Axel Krieger, Tinoosh Mohsenin

TL;DR
OA-NBV is a robot view-planning method that intelligently chooses viewpoints to see around obstacles, significantly improving occlusion handling and observation quality in human-centered tasks.
Contribution
The paper introduces OA-NBV, a novel occlusion-aware next-best-view planning approach that explicitly targets occlusion and feasibility for better human observation in cluttered environments.
Findings
Over 90% success rate in simulation and real-world tests.
Increases normalized target area by at least 81%.
Improves keypoint visibility by at least 58%.
Abstract
We naturally step sideways or lean to see around the obstacle when our view is blocked, and recover a more informative observation. Enabling robots to make the same kind of viewpoint choice is critical for human-centered operations, including search, triage, and disaster response, where cluttered environments and partial visibility frequently degrade downstream perception. However, many Next-Best-View (NBV) methods primarily optimize generic exploration or long-horizon coverage, and do not explicitly target the immediate goal of obtaining a single usable observation of a partially occluded person under real motion constraints. We present Occlusion-Aware Next-Best-View Planning for Human-Centered Active Perception on Mobile Robots (OA-NBV), an occlusion-aware NBV pipeline that autonomously selects the next traversable viewpoint to obtain a more complete view of an occluded human. OA-NBV…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Robotic Path Planning Algorithms · Multimodal Machine Learning Applications
