Low Resolution Next Best View for Robot Packing
Giuseppe Fabio Preziosa, Chiara Castellano, Andrea Maria Zanchettin, Marco Faroni, Paolo Rocco
- 发表年份
- 2025
- 访问权限
- 开放获取
摘要
Automating the packing of objects with robots is a key challenge in industrial automation, where efficient object perception plays a fundamental role. This paper focuses on scenarios where precise 3D reconstruction is not required, prioritizing cost-effective and scalable solutions. The proposed Low-Resolution Next Best View (LR-NBV) algorithm leverages a utility function that balances pose redundancy and acquisition density, ensuring efficient object reconstruction. Experimental validation demonstrates that LR-NBV consistently outperforms standard NBV approaches, achieving comparable accuracy with significantly fewer poses. This method proves highly suitable for applications requiring efficiency, scalability, and adaptability without relying on high-precision sensing.
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