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CNSv2: Probabilistic Correspondence Encoded Neural Image Servo

Abstract

Visual servo based on traditional image matching methods often requires accurate keypoint correspondence for high precision control. However, keypoint detection or matching tends to fail in challenging scenarios with inconsistent illuminations or textureless objects, resulting significant performance degradation. Previous approaches, including our proposed Correspondence encoded Neural image Servo policy (CNS), attempted to alleviate these issues by integrating neural control strategies. While CNS shows certain improvement against error correspondence over conventional image-based controllers, it could not fully resolve the limitations arising from poor keypoint detection and matching. In this paper, we continue to address this problem and propose a new solution: Probabilistic Correspondence Encoded Neural Image Servo (CNSv2). CNSv2 leverages probabilistic feature matching to improve robustness in challenging scenarios. By redesigning the architecture to condition on multimodal feature matching, CNSv2 achieves high precision, improved robustness across diverse scenes and runs in real-time. We validate CNSv2 with simulations and real-world experiments, demonstrating its effectiveness in overcoming the limitations of detector-based methods in visual servo tasks.

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@article{chen2025_2503.00132,
  title={ CNSv2: Probabilistic Correspondence Encoded Neural Image Servo },
  author={ Anzhe Chen and Hongxiang Yu and Shuxin Li and Yuxi Chen and Zhongxiang Zhou and Wentao Sun and Rong Xiong and Yue Wang },
  journal={arXiv preprint arXiv:2503.00132},
  year={ 2025 }
}
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