基于压缩感知的多光源深度重建

Maja Jurisic Bellotti, M. Vucic
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引用次数: 0

摘要

传统的成像系统将三维物体的表面投影到二维传感器上。表面只占观察到的体积的一小部分。因此,代表体积的样本形成一个稀疏信号。我们利用这一特性从一张严重散焦的图像中重建场景深度。提出了一种用于多光源场景重建的压缩感知方法。对于这样一个对象,我们讨论了一个光学系统模型,其测量矩阵收集的信息足以进行唯一重建。此外,我们提出了从图像分割成更小的部分重建场景,这些部分可以独立处理,从而降低了计算复杂度。我们通过模拟实验证明了成功的重建,其中物体由白色和随机分布的发光强度的点光源组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depth Reconstruction of Multiple Light Sources Based on Compressed Sensing
Classical imaging system projects the surface of a 3-D object onto a 2-D sensor. The surface occupies only a small part of the observed volume. Therefore, the samples representing the volume form a sparse signal. We exploit this property in reconstruction of the scene depth from one severely defocused image. We propose a compressed sensing method for the reconstruction of scene in which the observed object consists of multiple light sources. For such an object, we discuss a model of optical system whose measurement matrix collects information that is sufficient for a unique reconstruction. Furthermore, we present the reconstruction of a scene from image divided into smaller parts which can be processed independently thus reducing computational complexity. We demonstrate successful reconstruction using simulated experiments, in which the objects consist of point light sources with white and with randomly distributed luminous intensities.
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