论文标题
通过量子机学习进行捆绑调整以进行卫星成像
Towards Bundle Adjustment for Satellite Imaging via Quantum Machine Learning
论文作者
论文摘要
给定的是一组图像,其中所有图像在不同的时间点和不同观点显示同一区域的视图。任务是所有图像的对齐方式,例如可以从融合图像中提取相关信息,例如姿势,变化和地形。在这项工作中,由于这些子任务的苛刻计算复杂性,我们将重点介绍用于关键点提取和特征匹配的量子方法。为此,研究了K-Medoids聚类,内核密度聚类,最近的邻居搜索和内核方法,并解释了如何重新构建这些方法以用于量子退火器和基于栅极的量子计算机。在数字量子仿真硬件,量子退火器和量子栅极计算机上获得的实验结果表明,经典系统仍然可以提供较高的结果。但是,所提出的方法已准备好用于当前和即将到来的量子计算设备,在不久的将来有可能超越经典系统。
Given is a set of images, where all images show views of the same area at different points in time and from different viewpoints. The task is the alignment of all images such that relevant information, e.g., poses, changes, and terrain, can be extracted from the fused image. In this work, we focus on quantum methods for keypoint extraction and feature matching, due to the demanding computational complexity of these sub-tasks. To this end, k-medoids clustering, kernel density clustering, nearest neighbor search, and kernel methods are investigated and it is explained how these methods can be re-formulated for quantum annealers and gate-based quantum computers. Experimental results obtained on digital quantum emulation hardware, quantum annealers, and quantum gate computers show that classical systems still deliver superior results. However, the proposed methods are ready for the current and upcoming generations of quantum computing devices which have the potential to outperform classical systems in the near future.