地理参考的机器学习方法

D. S. Reddy, D. Rajesh Reddy, R. Usha, Ankit Chaudhary, SS Solanki
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引用次数: 0

摘要

从太空成像涉及到一些与机载平台(如MAVs、UAVs和无人机)完全不同的复杂性。所有这些平台都需要数学模型来表示图像采集的几何形状,并进一步对获取的图像进行地理参考。通常,包含任务关键参数和一系列旋转的严格传感器模型(RSM)服务于目的,或者开发Rational Functional Models (RFM),它经验地模仿RSM达到一定程度的可接受的精度。本文提出了一种用于卫星图像地理参考的机器学习方法,并将其结果与RFM和RSM进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach to Georeferencing
Imaging from space involves certain complications which are quite different from airborne platforms such as MAVs, UAVs and drones. All these platforms require mathematical models to represent the geometry of image acquisition and further georeferencing the acquired image. Conventionally, a Rigorous Sensor Model (RSM) involving mission critical parameters and a sequence of rotations serves the purpose, alternately Rational Functional Models (RFM) are developed which empirically mimics RSM to certain degree of acceptable accuracy. In this paper, a machine learning approach is proposed for georeferencing of satellite images and compares the results with RFM and RSM.
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