利用遥感和地理信息系统进行有监督分类精度评估

TEM Journal Pub Date : 2024-02-27 DOI:10.18421/tem131-41
Khalid H. Abbas Al-Aarajy, A. A. Zaeen, Khaleel I. Abood
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引用次数: 0

摘要

评估分类算法的准确性是至关重要的,因为它能让我们深入了解解决实际问题的可靠性和有效性。鉴于分类地图中经常会出现分类错误的像素和分类误区,因此准确性检查对任何基于遥感的分类实践都至关重要。在这项研究中,两颗假想卫星定期拍摄伊拉克杜胡克省的照片,并使用空间分析工具对照片进行分析,以提供有监督的分类。为了增强分类效果,还进行了一些处理,如平滑处理。分类结果表明,杜霍克省分为四个等级:植被覆盖、建筑物、水体和裸露土地。在 2013-2022 年期间,植被覆盖率从 2013 年的 63% 增加到 2022 年的 66%;建筑物每年大致增加 1%-3%;水体减少 2%-1%;未被占用的土地数量从 34% 减少到 30%。因此,采用与实地数据对比的方法对分类准确性进行了评估,分类准确性约为 85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Classification Accuracy Assessment Using Remote Sensing and Geographic Information System
Assessing the accuracy of classification algorithms is paramount as it provides insights into reliability and effectiveness in solving real-world problems. Accuracy examination is essential in any remote sensing-based classification practice, given that classification maps consistently include misclassified pixels and classification misconceptions. In this study, two imaginary satellites for Duhok province, Iraq, were captured at regular intervals, and the photos were analyzed using spatial analysis tools to provide supervised classifications. Some processes were conducted to enhance the categorization, like smoothing. The classification results indicate that Duhok province is divided into four classes: vegetation cover, buildings, water bodies, and bare lands. During 2013-2022, vegetation cover increased from 63% in 2013 to 66% in 2022; buildings roughly increased by 1% to 3% yearly; water bodies showed a decrease of 2% to 1%; the amount of unoccupied land showed a decrease from 34% to 30%. Therefore, the classification accuracy was assessed using the approach of comparison with field data; the classification accuracy was about 85%.
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