首页> 外文会议>International Conference on Image Analysis and Recognition(ICIAR 2004) pt.2; 20040929-1001; Porto(PT) >Classification of Dune Vegetation from Remotely Sensed Hyperspectral Images
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Classification of Dune Vegetation from Remotely Sensed Hyperspectral Images

机译:遥感高光谱影像对沙丘植被的分类

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Vegetation along coastlines is important to survey because of its biological value with respect to the conservation of nature, but also for security reasons since it forms a natural seawall. This paper studies the potential of airborne hyperspectral images to serve both objectives, applied to the Belgian coastline. Here, the aim is to build vegetation maps using automatic classification. A linear multiclass classifier is applied using the reflectance spectral bands as features. This classifier generates posterior class probabilities. Generally, in classification the class with maximum posterior value would be assigned to the pixel. In this paper, a new procedure is proposed for spatial classification smoothing. This procedure takes into account spatial information by letting the decision depend on the posterior probabilities of the neighboring pixels. This is shown to render smoother classification images and to decrease the classification error.
机译:海岸线上的植被非常重要,因为它具有保护自然的生物学价值,而且出于安全考虑,因为它形成了天然的海堤,因此对植被进行调查非常重要。本文研究了应用于比利时海岸线的机载高光谱图像同时满足这两个目标的潜力。在这里,目的是使用自动分类来建立植被图。使用反射光谱带作为特征来应用线性多类分类器。该分类器生成后验概率。通常,在分类中,将具有最大后验值的类别分配给像素。本文提出了一种新的空间分类平滑方法。该过程通过让决策取决于相邻像素的后验概率来考虑空间信息。这表明可以渲染更平滑的分类图像并减少分类误差。

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