基于遥感技术的城市土地利用研究

Xiaochun Xu
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引用次数: 0

摘要

城市化进程的推进使城市土地利用的变化成为研究的焦点。遥感技术作为捕捉这种变化的主要手段,为研究提供了宝贵的数据。本文的主要研究对象是基于遥感技术的城市土地利用的四种分类方法,并概述了这四种分类方法的主要作用和应用。本文认为,目视判读法效率较低,但应用广泛。此外,监督分类法和深度学习法的分类精度较低。无监督分类法虽然简单,但结果与实际差别较大。以上几种常用的土地分类方法各有优缺点,它们的结合使用可以确保遥感技术为城市规划和管理提供实时、有效、全面的土地利用信息。最后,本文展望了遥感技术与人工智能等现代技术的结合。整合后的技术可以为未来的城市发展提供更准确、更高效的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Urban Land Use based on Remote Sensing Technology
The advancement of urbanization has brought urban land use change into the spotlight of research. Remote sensing technology, as the primary means of capturing this change, provides valuable data for research. The main research object of this paper is the four classification methods of land use in cities based on remote sensing technology, and it outlines the main roles and applications of these four classification methods. This paper concludes that the visual interpretation method is less efficient but widely used. In addition, the accuracy of supervised classification and deep learning methods for classification is low. Unsupervised classification is simple, but the results differ greatly from reality. The above commonly used land classification methods have their advantages and disadvantages, and their combined use ensures that remote sensing technology provides real-time, effective, and comprehensive land use information for urban planning and management. Finally, this paper looks forward to the combination of remote sensing technology and modern technology, such as artificial intelligence. The integrated technology can provide more accurate and efficient technical support for future urban development.
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