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Segmentation and Classification of Geoenvironmental Zones of Interest in Aerial Images Using the Bounded Irregular Pyramid

机译:利用界定的不规则金字塔对空中图像感兴趣的地理环境的分割和分类

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The goal of this work is to automatically detect and classify a set of geoenvironmental zones of interest in panchromatic aerial images. Focused on a specific area, the zones to be detected are vegetation/mangrove, degradation/desertification, interface water-sediment and plain. These zones are very interesting from a geological point of view due to their spatial distribution and interrelation, which contribute to evaluate the natural anthropic impact level. The approach to unsuper-visedly extract these zones from an input image has two steps. Firstly, the image is automatically segmented in homogeneous colored regions using the Bounded Irregular Pyramid (BIP). The BIP is a hierarchy of successively reduced graphs which produces accurate segmentation results with a low computational cost. Secondly, each obtained region is classified using texture features to determine if it belongs to one of the geoenvironmental zones of interest. As texture features, we have evaluated two variations of the Local Binary Pattern (LBP) descriptor: the Extended-LBP (ELBP) and the LBP variance (LBPV). Both methods include a local contrast measure. For classifying the obtained features, the Support Vector Machine (SVM) has been employed. At this stage, we have evaluated the use of linear and radial basis function (RBF) kernels. The whole framework was tested using images obtained from our specific area of interest: the location of Carenero, Miranda state (Venezuela), in years 1936 and 1992. They allow to study the variation of the geoenvironmental zones of interest of this location in this period of time. These images are low quality images and present significant variations in illumination. This makes difficult the texture classification of their zones. However, the obtained results show that the proposed approach provides good results in terms of identification of zones of geoenviromental interest in these images.
机译:这项工作的目标是自动检测并分类一组兴趣的兴趣的地理环境区域。专注于特定区域,待检测区是植被/红树林,降解/荒漠化,界面水沉积和平原。由于其空间分布和相互关系,这些区域非常有趣,这有助于评估自然的人类冲击水平。从输入图像中毫无思考地提取这些区域的方法有两个步骤。首先,使用界定的不规则金字塔(BIP)在均匀的着色区域中自动分段。 BIP是连续减少图形的层次结构,其产生具有低计算成本的准确分割结果。其次,每个获得的区域被分类为使用纹理特征来确定它是否属于感兴趣的地理环境之一。作为纹理特征,我们已经评估了局部二进制模式(LBP)描述符的两个变体:扩展LBP(ELBP)和LBP方差(LBPV)。两种方法都包括局部对比度。为了对所获得的特征进行分类,已经采用了支持向量机(SVM)。在此阶段,我们评估了线性和径向基函数(RBF)内核的使用。通过从我们特定的感兴趣区域获得的图像测试整个框架:Carenero,Miranda国家(委内瑞拉)的位置,1936年和1992年。他们允许在这一时期研究这个地理环境的地理环境的变化时间。这些图像是低质量的图像,并在照明中具有显着变化。这使得它们的区域纹理分类难以实现。然而,获得的结果表明,该方法在这些图像的地理血征兴趣区的鉴定方面提供了良好的结果。

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