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Tracing Back Error Sources to Explain and Mitigate Pose Estimation Failures

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Robust estimation of object poses in robotic manipulation is often addressed using foundational general estimators, that aim to handle diverse error sources naively within a single model. Still, they struggle due to environmental uncertainties, while requiring long inference times and heavy computation. In contrast, we propose a modular, uncertainty-aware framework that attributes pose estimation errors to specific error sources and applies targeted mitigation strategies only when necessary. Instantiated with Iterative Closest Point (ICP) as a simple and lightweight pose estimator, we leverage our framework for real-world robotic grasping tasks. By decomposing pose estimation into failure detection, error attribution, and targeted recovery, we significantly improve the robustness of ICP and achieve competitive performance compared to foundation models, while relying on a substantially simpler and faster pose estimator.

Loris Schneider, Yitian Shi, Rosa Wolf, Carolin Brenner, Rudolph Triebel, Rania Rayyes• 2026

Related benchmarks

TaskDatasetResultRank
GraspingReal-world grasping scenes Noise
Grasp Success Rate80
3
GraspingReal-world grasping scenes Occlusion
Grasp Success Rate70
3
GraspingReal-world grasping scenes Bad Initialization
Grasp Success Rate55
3
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