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首页> 外文期刊>Technisches Messen: Sensoren, Gerate, Systeme >Optimal Depth Estimation from a Single Image by Computational Imaging Using Chromatic Aberrations
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Optimal Depth Estimation from a Single Image by Computational Imaging Using Chromatic Aberrations

机译:使用色差通过计算成像从单个图像进行最佳深度估计

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摘要

We present a computational imaging approach to estimate the depth from a single image using axial chromatic aberrations. It includes a co-design of optics and digital processing to select the optimal parameters of a lens such as focal length, f-number, and chromatic focal shift according to the performance of a depth estimation algorithm on the digital side. A simulation framework evaluates the complete systems performance in different imaging conditions including optimal axial chromatic lens aberration. A low-complexity algorithm estimates the depth map of real scenes. Experiments on real and synthetic scenes show the feasibility of the proposed system for depth estimation. In the case of relatively broadband object spectra and a lens with focal length of 4 mm, depth is estimated with an RMS error of 6-10%.
机译:我们提出一种计算成像方法,以使用轴向色差从单个图像估计深度。它包括光学和数字处理的协同设计,以根据数字侧深度估计算法的性能来选择镜头的最佳参数,例如焦距,f值和色焦移。仿真框架可评估包括最佳轴向彩色透镜像差在内的不同成像条件下的完整系统性能。低复杂度算法估计真实场景的深度图。在真实和合成场景上的实验表明,该系统用于深度估计的可行性。对于较宽的物体光谱和焦距为4 mm的镜头,估计深度的RMS误差为6-10%。

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