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首页> 外文期刊>International journal of remote sensing >The role of digital bathymetry in mapping shallow marine vegetation from hyperspectral image data
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The role of digital bathymetry in mapping shallow marine vegetation from hyperspectral image data

机译:数字测深在从高光谱图像数据绘制浅海植被中的作用

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摘要

Hyperspectral remote sensing is a proven technology for measurement of coastal ocean colour, including sea-bed mapping in optically shallow waters. Using hyperspectral imagery of shallow ( < 15m deep) sea bed acquired with the Compact Airborne Spectrographic Imager (CASI-550), we examined how changes in the spatial resolution of bathymetric grids, created from sonar data (echosounding) and input to conventional image classifiers, affected the accuracy of distributional maps of invasive (Codium fragile ssp. tomentosoid.es) and native (kelp) seaweeds off the coast of Nova Scotia, Canada. The addition of a low-resolution bathymetric grid, interpolated from soundings by the Canadian Hydrographic Service, improved the overall classification accuracies by up to ~10%. However, increasing the bathymetric resolution did not increase the accuracy of classification maps produced with the supervised (Maximum Likelihood) classifier as shown by a slightly lower accuracy (2%) when using an intermediate-resolution bathymetric grid interpolated from soundings with a recreational fish finder. Supervised classifications using the first three eigenvectors from a principal-components analysis were consistently more accurate (by at least 27%) than unsupervised (K-means classifier) schemes with similar data compression. With an overall accuracy of 76%, the most reliable scheme was a supervised classification with low-resolution bathymetry. However, the supervised approach was particularly sensitive, and variations in accuracy of 2% resulted in overestimations of up to 53%) in the extent of C. fragile and kelp. The use of a passive optical bathymetric algorithm to derive a high-resolution bathymetric grid from the CASI data showed promise, although fundamental differences between this grid and those created with the sonar data limited the conclusions. The bathymetry (at any spatial resolution) appeared to improve the accuracy of the classifications both by reducing the confusion among the spectral classes and by removing noise in the image data. Variations in the accuracy of depth estimates and inescapable positional inaccuracies in the imagery and ground data largely accounted for the observed differences in the classification accuracies. This study provides the first detailed demonstration of the advantages and limitations of integrating digital bathymetry with hyperspectral data for the mapping of benthic assemblages in optically shallow waters.
机译:高光谱遥感是一种用于测量沿海海洋色彩的成熟技术,其中包括光学浅水区的海床制图。使用通过紧凑型机载光谱成像仪(CASI-550)采集的浅海(<15m深)海床的高光谱图像,我们研究了声纳数据(回声)产生的测深网格空间分辨率的变化以及如何输入常规图像分类器,影响了加拿大新斯科舍省沿岸的入侵性海藻(脆弱的亚种sment。tomentosoid.es)和原生海藻(海藻)的分布图的准确性。由加拿大水文局从测深中插入的低分辨率测深网格增加了总分类精度,最高可达约10%。但是,增加测深分辨率并不能提高使用监督(最大似然)分类器生成的分类图的准确性,如使用通过休闲鱼探仪从测深中插值的中分辨率测深网格,其精度略低(2%)所示。使用来自主成分分析的前三个特征向量进行的监督分类始终比具有类似数据压缩的无监督(K均值分类器)方案更准确(至少27%)。总体准确性为76%,最可靠的方案是带有低分辨率测深法的监督分类。但是,有监督的方法特别敏感,准确度2%的变化导致脆弱梭状芽胞杆菌和海带的高估高达53%。使用无源光学测深算法从CASI数据中获得高分辨率测深网格显示出了希望,尽管该网格与声纳数据创建的网格之间存在根本差异。测深法(在任何空间分辨率下)似乎都可以通过减少光谱类之间的混淆以及通过去除图像数据中的噪声来提高分类的准确性。深度估计准确性的变化以及图像和地面数据中不可避免的位置误差在很大程度上解释了分类精度中观察到的差异。这项研究首次详细展示了将数字测深仪与高光谱数据相集成的优势和局限性,以绘制光学浅水区的底栖动物群。

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