Remote Sensing of Ecological Hotspots: Producing Value-added Information from Multiple Data Sources

I. Witharana, Uchitha S. Nishshanka, J. Gunatilaka
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Abstract

Fusing high-spatial resolution panchromatic and high-spectral resolution multispectral images with complementary characteristics provides basis for complex land-use and land-cover type classifications. In this research, we investigated how well different pan sharpening algorithms perform when applied to single-sensor single-date and multi-senor multi–date images that encompass the Horton Plains national park (HPNP), a highly fragile eco-region that has been experiencing severe canopy depletion since 1970s, in Sri Lanka. Our aim was to deliver resolution-enhanced multitemporal images from multiple earth observation (EO) data sources in support of long-term dieback monitoring in the HPNP. We selected six candidate fusion algorithms: Brovey transform, Ehlers fusion algorithm, high-pass filter (HPF) fusion algorithm, modified intensity-hue-saturation (MIHS) fusion algorithm, principal component analysis (PCA) fusion algorithm, and the wavelet-PCA fusion algorithm. These algorithms were applied to eight different aerial and satellite images taken over the HPNP during last five decades. Fused images were assessed for spectral and spatial fidelity using fifteen quantitative quality indicators and visual inspection methods. Spectral quality metrics include correlation coefficient, root-mean-square-error (RMSE), relative difference to mean, relative difference to standard deviation, spectral discrepancy, deviation index, peak signal-to-noise ratio index, entropy, mean structural similarity index, spectral angle mapper, and relative dimensionless global error in synthesis. The spatial integrity of fused images was assessed using Canny edge correspondence, high-pass correlation coefficient, RMSE of Sobel-filtered edge images, and Fast Fourier Transform correlation. The Wavelet-PCA algorithm exhibited the worst spatial improvement while the Ehlers.MIHS and PCA fusion algorithms showed mediocre results. With respect to our multidimensional quality assessment,the HPF emerged as the best performing algorithm for single-sensor single-date and multi-sensor multi-date data fusion.We further examined the effect of fusion in the object-based image analysis framework. Our subjective analysis showed the improvement of image object candidates when panchromatic images’ high-frequency information is injected to low resolution multispectral images.
生态热点遥感:多数据源生成增值信息
融合具有互补特征的高空间分辨率全色和高光谱分辨率多光谱图像为复杂的土地利用和土地覆盖类型分类提供了依据。在这项研究中,我们研究了不同的pan锐化算法在应用于斯里兰卡霍顿平原国家公园(Horton Plains national park,简称HPNP)的单传感器单日期和多传感器多日期图像时的表现。霍顿平原国家公园是一个高度脆弱的生态区域,自20世纪70年代以来一直经历着严重的冠层损耗。我们的目标是提供来自多个地球观测(EO)数据源的分辨率增强的多时相图像,以支持HPNP的长期枯死监测。我们选择了6种候选融合算法:Brovey变换、Ehlers融合算法、高通滤波(HPF)融合算法、改进的强度-色调-饱和度(MIHS)融合算法、主成分分析(PCA)融合算法和小波-PCA融合算法。这些算法应用于过去五十年中在HPNP上拍摄的八张不同的航空和卫星图像。使用15种定量质量指标和目视检查方法评估融合图像的光谱和空间保真度。光谱质量指标包括相关系数、均方根误差(RMSE)、相对均值差、相对标准差差、光谱差异、偏差指数、峰值信噪比指数、熵、平均结构相似性指数、光谱角映射器、合成中相对无量纲全局误差等。利用Canny边缘对应、高通相关系数、sobel滤波边缘图像的RMSE和快速傅里叶变换相关来评估融合图像的空间完整性。小波pca算法的空间改进效果最差,Ehlers算法的空间改进效果最差。MIHS和PCA融合结果一般。在我们的多维质量评估方面,HPF是单传感器单日期和多传感器多日期数据融合的最佳算法。我们进一步研究了融合在基于目标的图像分析框架中的效果。我们的主观分析表明,将全色图像的高频信息注入到低分辨率多光谱图像中,可以提高图像对象的候选性。
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