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首页> 外文期刊>Land Degradation and Development >SEVERITY OF SALINITY ACCURATELY DETECTED AND CLASSIFIED ON A PADDOCK SCALE WITH HIGH RESOLUTION MULTISPECTRAL SATELLITE IMAGERY
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SEVERITY OF SALINITY ACCURATELY DETECTED AND CLASSIFIED ON A PADDOCK SCALE WITH HIGH RESOLUTION MULTISPECTRAL SATELLITE IMAGERY

机译:在具有高分辨率多光谱卫星影像的PADDOCK标尺上准确检测和分类了盐度

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摘要

We hypothesised that digital mapping of various forms of salt-affected soils using high resolution satellite imagery, supported by field studies, would be an efficient method to classify and map salinity, sodicity or both at paddock level, particularly in areas where salt-affected patches are small and the effort to map these by field-based soil survey methods alone would be inordinately time consuming. To test this hypothesis, QuickBird satellite data (pan-sharpened four band multispectral imagery) was used to map various forms of surface-expressed salinity in an agricultural area of South Australia. Ground-truthing was performed by collecting 160 soil samples over the study area of 159km(2). Unsupervised classification of the imagery covering the study area allowed differentiation of severity levels of salt-affected soils, but these levels did not match those based on measured electrical conductivity (EC) and sodium adsorption ratio (SAR) of the soil samples, primarily because the expression of salinity was strongly influenced by paddock-level variations in crop type, growth and prior land management. Segmentation of the whole image into 450 paddocks and unsupervised classification using a paddock-by-paddock approach resulted in a more accurate discrimination of salinity and sodicity levels that was correlated with EC and SAR. Image-based classes discriminating severity levels of salt-affected soils were significantly related with EC but not with SAR. Of the spectral bands, bands 2 (green, 520-600nm) and 4 (near-infrared, 760-900nm) explained the majority of the variation (99 per cent) in the spectral values. Thus, paddock-by-paddock classification of QuickBird imagery has the potential to accurately delineate salinity at farm level, which will allow more informed decisions about sustainable agricultural management of soils.
机译:我们假设在实地研究的支持下,使用高分辨率卫星图像对各种形式的盐渍土壤进行数字制图,这将是一种有效的方法,可以在围场一级对盐度,盐度或两者进行分类和制图,尤其是在盐渍斑块地区体积很小,仅通过基于实地的土壤调查方法绘制这些图就非常耗时。为了验证这一假设,使用了QuickBird卫星数据(四分频锐化的四波段多光谱图像)来绘制南澳大利亚州农业地区各种形式的表面表达盐度。在159km(2)的研究区域内收集了160个土壤样品,进行了地面实测。对研究区域的图像进行无监督分类可以区分受盐影响的土壤的严重程度,但这些水平与根据土壤样品的测得的电导率(EC)和钠吸附率(SAR)得出的结果不匹配,主要是因为盐度的表达受围场水平,作物类型,生长和先前土地管理的影响很大。将整个图像分割成450个围场,并使用围场逐个围场方法进行无监督分类,从而可以更准确地判别与EC和SAR相关的盐度和碱度。基于图像的区分盐分土壤严重程度的类别与EC显着相关,但与SAR无关。在光谱波段中,波段2(绿色,520-600nm)和波段4(近红外,760-900nm)解释了光谱值的大部分变化(99%)。因此,QuickBird图像的逐个围场分类有潜力准确地描绘出农场一级的盐度,这将使人们能够对土壤的可持续农业管理做出更明智的决策。

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