Evaluating pasture cover density mapping: a comparative analysis of Sentinel-2 and Spot-5 multispectral sensor images

IF 5.7 3区 环境科学与生态学 Q1 WATER RESOURCES
Taha Mansouri, Javad Varvani, Hamid Toranjzar, Nourollah Abdi, Abbas Ahmadi
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Abstract

Vegetation density extraction is influenced by the characteristics of satellite images, vegetation type, classification algorithm, and region, but there is little information about multispectral imaging (MSI). Studying the compatibility of the information content of sensors to replace sensors in areas where there is no easy access to their data is necessary for remote sensing (RS) studies. This study aims to assess the suitability of MSI from Sentinel-2 and Spot-5 satellites for generating pasture density maps. The Middle Kashkan watershed in the Lorestan Province of Iran was the study area. Geometric correction of the images was performed using ground control points (GCP) and the area's digital elevation model, achieving an accuracy of 0.21 pixels or better. Supervised classification techniques including parallelogram, minimal distance, maximum likelihood, and artificial neural network (ANN) algorithms were applied to the primary MSI of each satellite, as well as the integrated image of Spot-5 and the resulting pasture density map. Three density categories were considered: 5–25%, 25–50%, and over 50%. To validate the accuracy of the classification, a ground truth map of the region was created by interpreting a referenced official digital orthophotomosaic image at a scale of 1:40,000. Comparative analysis of the classified images revealed that the Sentinel-2 image with PCA-2-8 band composition and ANN classification algorithm yielded superior results, with an overall accuracy of 65.72% and a kappa coefficient of 0.08, compared to the Spot-5 image with PCA-3-1 band composition and the ANN classification algorithm. Spot-5 satellite images demonstrated greater effectiveness in generating pasture cover maps across the three density categories. These findings suggest that satellite images with suitable spatial and spectral resolution can be effectively utilized for generating accurate pasture density maps and monitoring long-term pasture preservation, particularly in regions characterized by high aerial photography altitudes in pasture areas. This approach holds the potential for effective pasture management and conservation efforts on a global scale.

Abstract Image

评估牧草覆盖密度绘图:哨兵-2 号和 Spot-5 号多光谱传感器图像的比较分析
植被密度提取受卫星图像特征、植被类型、分类算法和区域的影响,但有关多光谱成像(MSI)的信息却很少。遥感(RS)研究需要研究传感器信息内容的兼容性,以便在无法轻松获取传感器数据的地区取代传感器。本研究旨在评估哨兵-2 号和 Spot-5 号卫星的 MSI 在生成牧场密度图方面的适用性。研究区域为伊朗洛雷斯坦省的中卡什坎流域。利用地面控制点(GCP)和该地区的数字高程模型对图像进行了几何校正,精度达到 0.21 像素或更高。监督分类技术包括平行四边形、最小距离、最大似然和人工神经网络(ANN)算法,适用于每颗卫星的主 MSI 以及 Spot-5 的综合图像和由此产生的牧场密度图。考虑了三个密度类别:5-25%、25-50% 和 50% 以上。为验证分类的准确性,通过解读比例为 1:40,000 的官方数字正射影像拼接图,绘制了该地区的地面实况图。对分类图像的比较分析表明,与采用 PCA-3-1 波段组成和 ANN 分类算法的 Spot-5 图像相比,采用 PCA-2-8 波段组成和 ANN 分类算法的 Sentinel-2 图像结果更优,总体准确率为 65.72%,卡帕系数为 0.08。Spot-5 卫星图像在生成三种密度类别的牧草覆盖图方面表现出更高的有效性。这些发现表明,具有适当空间和光谱分辨率的卫星图像可有效用于生成准确的牧草密度图和监测牧草的长期保存情况,特别是在牧区航空摄影高度较高的地区。这种方法有望在全球范围内实现有效的牧场管理和保护工作。
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来源期刊
Applied Water Science
Applied Water Science WATER RESOURCES-
CiteScore
9.90
自引率
3.60%
发文量
268
审稿时长
13 weeks
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