可编程单像素成像

Zhenyong Shin, Horng Sheng Lin, Tong-Yuen Chai, Xin Wang, S. Chua
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引用次数: 4

摘要

传统的成像传感器在分辨率和动态范围方面往往达到极限。此外,传统的不可见波长成像相对更昂贵和复杂。作为一种替代方案,单像素相机可以降低传统多像素相机所需要的成本和复杂性。在数字成像方面,Nyquist-Shannon定理指出,为了稳定地恢复图像而不引入可察觉的误差,需要测量的次数和图像像素的数量至少相同。随着图像像素数量的不断增加,增加测量次数以满足Nyquist-Shannon定理的要求变得越来越具有挑战性。因为在许多情况下,增加测量次数意味着所需的成本和时间也相应增加。因此,需要一个均值来恢复图像从一些测量少于像素数(次奈奎斯特测量)。本文的目的是介绍和比较压缩感知/采样(CS)和空间变分辨率(SVR)单像素成像的单像素成像。这两种方法都能够稳定地从亚奈奎斯特测量中恢复图像。在仿真中对图像进行了测量和重建。SVR单像素成像通过牺牲周边区域的分辨率来减少测量次数。这实现了可编程成像概念,其中多分辨率可以自适应地应用于优化图像质量和测量数量之间的平衡。这可能有利于一些成像应用,其中感兴趣区域(中央凹)中的目标优先于该区域(如背景)的其余部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Programmable Single-Pixel Imaging
Conventional imaging sensors often reach their limits in terms of resolution and dynamic range. In addition, conventional imaging in invisible wavelengths is relatively more expensive and complicated. As an alternative, single-pixel cameras allow reduction of cost and complexity that would be otherwise required in a conventional multi-nixel camera. In terms of digital imaging, Nyquist-Shannon theorem states that to stably recover an image without introducing perceptible errors, the number of measurements and the number of image pixels are required to be at least the same. As the number of image pixels is ever increasing, increasing the number of measurements to fulfill Nyquist-Shannon theorem's requirements has become increasingly challenging. Since in many cases increasing the number of measurements means that the cost and time required are increasing accordingly as well. Therefore a mean to recover images from a number of measurements less than the number of pixels (sub-Nyquist measurements) is needed. The objective of this paper is to present and compare single-pixel imaging via compressive sensing/sampling (CS) and spatially-variant resolution (SVR) single-pixel imaging. Both methods are capable of recovering images stably from sub-Nyquist measurements. The measurements and reconstructions of images were done in simulations. SVR single-pixel imaging reduces the number of measurement by sacrificing the resolution of the peripheral regions. This realizes the programmable imaging concept where multi-resolution can be adaptively applied to optimize the balance between image quality and number of measurement. This could benefit some imaging applications where a target in the region of interest (the fovea) is prioritized over the rest of the region (such as the background).
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