计算机科学
机器人
人工智能
折叠(DSP实现)
多模光纤
计算机视觉
软机器人
编码(内存)
纤维
斑点图案
机器人学
人工神经网络
夹持器
解调
深度学习
光纤
混乱的
频道(广播)
钥匙(锁)
跟踪(教育)
灵活性(工程)
概率逻辑
微流控
作者
Zhaofan He,Lele Wang,Haidi Geng,Zhengyang Lu,Tiantian He,Hongkun Zhong,Hailong Zhang,Runfeng Zhu,Qingxiang Zhao,Yuan Meng,Dan Li,Ping Yan,Qiang Liu,Qirong Xiao
出处
期刊:Science Advances
[American Association for the Advancement of Science]
日期:2026-06-12
卷期号:12 (24): eaef6263-eaef6263
标识
DOI:10.1126/sciadv.aef6263
摘要
The evolution of soft robots into embodied intelligent systems relies fundamentally on precise proprioception. However, a universal solution for capturing continuous deformations during diverse interactions, particularly in spatially confined interventional scenarios, remains lacking. Here, we introduce a deep learning-enabled versatile shape perception method based on a single-ended multimode fiber (MMF). By leveraging the intrinsic integration advantages of optics, our minimalist reflective architecture physically eliminates the dependence on complex demodulation units and distal devices. Furthermore, treating chaotic optical speckle fields as data streams encoding high-dimensional shape information, reconfigurable neural decoders resolve a single physical channel into versatile perception modes tailored to heterogeneous tasks: discrete state confirmation on soft grippers (>99% accuracy), continuous shape tracking on bionic dexterous hands (~5-fold spatial resolution enhancement), and intuitive 3D morphological reconstruction of soft surgical robots (IoU>0.93). Overall, our work establishes a versatile framework for breaking hardware adaptability limits via computation, laying a solid foundation for closed-loop control in digital twins of soft robots.
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