单发
物理
极化(电化学)
动态范围
航程(航空)
高动态范围
光学
材料科学
化学
物理化学
复合材料
作者
Fuqian Li,Qican Zhang,Yajun Wang
标识
DOI:10.1002/lpor.202501071
摘要
Abstract In optical 3D sensing, high‐efficiency and high‐precision reconstruction of high‐dynamic‐range (HDR) scenes is highly crucial. Current HDR methods require either fusing images under multiple exposures or training network on massive datasets. To this end, a single‐exposure full‐resolution multi‐polarization fringe enhancement method, establishing an effective hardware‐algorithm collaboration mechanism for HDR 3D measurement for the first time, is proposed. Specifically, in the hardware part, a full‐resolution multi‐polarization (FM) imaging method is proposed. Unlike conventional multi‐polarization modulation methods, the method avoids the 3/4‐pixel loss and the instantaneous field‐of‐view error. Furthermore, by eliminating the specular reflection, more reliable scene information is captured, especially in overexposed areas, which significantly reduces the burden of fringe repair algorithm. In the algorithm part, a hybrid repair algorithm is proposed based on physics‐informed zero‐shot learning. The algorithm incorporates the physics priors of phase retrieval, FM fringe noise, and deep neural network into a dual‐stream network architecture. This enables it to address underexposure and overexposure issues in the FM fringe without network pretraining on any dataset. Thus, the advantages of hardware modulation and algorithm optimization are fully integrated. Experiments on static and dynamic scenes with complex reflectivity demonstrate the superiority of the method in efficiency, resolution, fidelity, and generalization ability.
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