Implementing an object-based multi-index protocol for mapping surface glacier facies from Chandra-Bhaga basin, Himalaya

IF 0.5 Q4 ECOLOGY Czech Polar Reports Pub Date : 2020-02-04 DOI:10.5817/cpr2019-2-11
S. Jawak, S. F. Wankhede, A. J. Luis, P. Pandit, Shubhang Kumar
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引用次数: 1

Abstract

Surface glacier facies are superficial expressions of a glacier that are distinguishable based on differing spectral and structural characteristics according to their age and inter-mixed impurities. Increasing bodies of literature suggest that the varying properties of surface glacier facies differentially influence the melt of the glacier, thus affecting the mass balance. Incorporating these variations into distributed mass balance modelling can improve the perceived accuracy of these models. However, detecting and subsequently mapping these facies with a high degree of accuracy is a necessary precursor to such complex modelling. The variations in the reflectance spectra of various glacier facies permit multiband imagery to exploit band ratios for their effective extraction. However, coarse and medium spatial resolution multispectral imagery can delimit the efficacy of band ratioing by muddling the minor spatial and spectral variations of a glacier. Very high-resolution imagery, on the other hand, creates distortions in the conventionally obtained information extracted through pixel-based classification. Therefore, robust and adaptable methods coupled with higher resolution data products are necessary to effectively map glacier facies. This study endeavours to identify and isolate glacier facies on two unnamed glaciers in the Chandra-Bhaga basin, Himalayas, using an established object-based multi-index protocol. Exploiting the very high resolution offered by WorldView-2 and its eight spectral bands, this study implements customized spectral index ratios via an object-based environment. Pixel-based supervised classification is also performed using three popular classifiers to comparatively gauge the classification accuracies. The object-based multi-index protocol delivered the highest overall accuracy of 86.67%. The Minimum Distance classifier yielded the lowest overall accuracy of 62.50%, whereas, the Mahalanobis Distance and Maximum Likelihood classifiers yielded overall accuracies of 77.50% and 70.84% respectively. The results outline the superiority of the object-based method for extraction of glacier facies. Forthcoming studies must refine the indices and test their applicability in wide ranging scenarios.
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基于对象的多指标协议在Chandra-Bhaga盆地地表冰川相制图中的实现
表面冰川相是冰川的表面表现形式,根据冰川的年龄和相互混合的杂质,可以根据不同的光谱和结构特征进行区分。越来越多的文献表明,表面冰川相的不同性质对冰川的融化有不同的影响,从而影响了物质平衡。将这些变化纳入分布式质量平衡模型可以提高这些模型的感知精度。然而,高精度地探测和绘制这些相是这种复杂建模的必要前提。不同冰川相反射光谱的变化使得多波段成像能够利用波段比进行有效提取。然而,粗糙和中等空间分辨率的多光谱图像会混淆冰川的微小空间和光谱变化,从而限制波段比例的有效性。另一方面,非常高分辨率的图像会在通过基于像素的分类提取的常规获得的信息中产生扭曲。因此,为了有效地绘制冰川相图,需要具有鲁棒性和适应性的方法以及更高分辨率的数据产品。本研究试图利用已建立的基于对象的多指数协议,识别和分离喜马拉雅山脉钱德拉-巴加盆地两个未命名冰川的冰川相。利用WorldView-2及其8个光谱波段提供的极高分辨率,本研究通过基于对象的环境实现了定制的光谱指数比。使用三种常用的分类器进行基于像素的监督分类,比较分类精度。基于对象的多索引协议的总体准确率最高,为86.67%。最小距离分类器的总体准确率最低,为62.50%,而马氏距离分类器和最大似然分类器的总体准确率分别为77.50%和70.84%。结果显示了基于目标的冰川相提取方法的优越性。未来的研究必须完善这些指数,并测试它们在广泛情况下的适用性。
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来源期刊
Czech Polar Reports
Czech Polar Reports Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
1.30
自引率
10.00%
发文量
22
期刊介绍: Czech Polar Reports is an international, multidisciplinary, peer-reviewed journal. It is issued 2 times a year. The journal is dedicated to provide original research papers for sciences related to the polar regions and other planets with polar analogues. Czech Polar Reports covers the disciplines listed below. polar paleontology, geology, geochemistry, geomorphology, glaciology, climatology, hydrology, pedology, biochemistry, ecology, environmental science, microbiology, plant and animal biology including marine biology.
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