Monocular Metasurface for Structured Light Generation and 3D Imaging with a Large Field-of-View.

Monocular Metasurface for Structured Light Generation and 3D Imaging with a Large Field-of-View.

Luo, Yixiong;Li, Xiaoyin;Zhang, Runzhe;Guo, Yinghui;Pu, Mingbo;Fan, Yulong;Zhang, Qi;He, Qiong;Che, Jianqiang;Zhao, Zeyu;Luo, Xiangang;
ACS applied materials & interfaces 2024
27
luo2024monocularacs

Abstract

Structured light three-dimensional (3D) imaging technology captures the geometric information on 3D objects by recording waves reflected from the objects' surface. The projection angle and point number of the laser dots directly determine the field-of-view (FOV) and the resolution of the reconstructed image. Conventionally, diffractive optical elements with micrometer-scale pixel size have been used to generate laser dot arrays, leading to limited FOV and point number within the projection optical path. Here, we theoretically put forward and experimentally demonstrate a monocular geometric phase metasurface composed of deep subwavelength meta-atoms to generate a 10 798 dot array within an FOV of 163°. Attributed to the vast number and high-density point cloud generated by the metasurface, the 3D reconstructed results showcase a maximum relative error in depth of 5.3 mm and a reconstruction error of 6.07%. Additionally, we propose a spin-multiplexed metasurface design method capable of doubling the number of lattice points. We demonstrate its application in the field of 3D imaging through experiments, where the 3D reconstructed results show a maximum relative depth error of 0.44 cm and a reconstruction error of 2.78%. Our proposed metasurface featuring advanced point cloud generation holds substantial potential for various applications such as facial recognition, autonomous driving, virtual reality, and beyond.

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ID: 280165
Ref Key: luo2024monocularacs
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280165
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10.1021/acsami.4c09254
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