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Real-time sampling-based safe motion planning for robotic manipulators in dynamic environments

3 Pith papers cite this work. Polarity classification is still indexing.

3 Pith papers citing it

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citation-polarity summary

fields

cs.RO 3

years

2026 3

verdicts

UNVERDICTED 3

roles

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representative citing papers

Betting for Sim-to-Real Performance Evaluation

cs.RO · 2026-04-27 · unverdicted · novelty 7.0

Betting mechanisms can yield provably more accurate and efficient estimates of real-world robot behavior than Monte Carlo sampling under specified conditions, with practical approximations demonstrated on synthetic data and a robotic manipulator task.

Visibility-Aware Mobile Grasping in Dynamic Environments

cs.RO · 2026-05-04 · unverdicted · novelty 5.0 · 2 refs

A visibility-aware mobile grasping system with iterative whole-body planning and behavior-tree subgoal generation achieves 68.8% success in unknown static and 58% in dynamic environments, outperforming a baseline by 22.8% and 18%.

citing papers explorer

Showing 3 of 3 citing papers.

  • Betting for Sim-to-Real Performance Evaluation cs.RO · 2026-04-27 · unverdicted · none · ref 5

    Betting mechanisms can yield provably more accurate and efficient estimates of real-world robot behavior than Monte Carlo sampling under specified conditions, with practical approximations demonstrated on synthetic data and a robotic manipulator task.

  • ViserDex: Visual Sim-to-Real for Robust Dexterous In-hand Reorientation cs.RO · 2026-04-13 · unverdicted · none · ref 14

    A framework using 3D Gaussian Splatting for visual domain randomization enables robust monocular RGB-based dexterous in-hand reorientation on real hardware for multiple objects under varied lighting.

  • Visibility-Aware Mobile Grasping in Dynamic Environments cs.RO · 2026-05-04 · unverdicted · none · ref 13 · 2 links

    A visibility-aware mobile grasping system with iterative whole-body planning and behavior-tree subgoal generation achieves 68.8% success in unknown static and 58% in dynamic environments, outperforming a baseline by 22.8% and 18%.