Imaging depth and spectrum have been extensively studied in isolation from each other for decades. Recently, hyperspectral-depth (HS-D) imaging emerges to capture both information simultaneously by combining two different imaging systems; one for depth, the other for spectrum. While being accurate, this combinational approach induces increased form factor, cost, capture time, and alignment/registration problems. In this work, departing from the combinational principle, we propose a compact single-shot monocular HS-D imaging method. Our method uses a diffractive optical element (DOE), the point spread function of which changes with respect to both depth and spectrum. This enables us to reconstruct spectrum and depth from a single captured image. To this end, we develop a differentiable simulator and a neural-network-based reconstruction that are jointly optimized via automatic differentiation. To facilitate learning the DOE, we present a first HS-D dataset by building a benchtop HS-D imager that acquires high-quality ground truth. We evaluate our method with synthetic and real experiments by building an experimental prototype and achieve state-of-the-art HS-D imaging results.
翻译:最近,超光谱深度(HS-D)成像通过结合两种不同的成像系统同时捕捉两种信息,一种是深度的,另一种是频谱的。这种结合方法虽然准确,但会产生更大的形式因素、成本、捕捉时间和校正/登记问题。在这项工作中,我们从综合原则出发,建议采用一个紧凑的单发单发单向单向单向HS-D成像方法。我们的方法使用一种调和性光学元素(DOE),其点分布功能在深度和频谱上都发生变化。这使我们能够从单一的成像中重建频谱和深度。为此,我们开发了一种不同的模拟器和基于神经网络的重建,通过自动区分来共同优化。为了便利学习DODE,我们提出了第一个HS-D数据集,方法是建立一个获得高质量地面事实的台式HS-D成像仪。我们用合成和真实的实验方法评估了我们的方法,方法是建立一个实验原型实验,并实现先进的HS-D成像结果。