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Active learning classification and change detection on multispectral images

机译:主动学习分类和多光谱图像变化检测

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The performance of image classification usually depends on the quality of labelled datasets to be used as training samples. In the context of remote sensing, the acquisition of ground-truth data can be a difficult and expensive task because it depends on the comprehensive surveys over the area of interest while the labelling task must be performed by experienced professionals. On the other hand, algorithms based on Active Learning can be helpful to overcome the lack of training samples. We present a cohesive algorithm for image classification and change detection based on Active Learning, that tackles the lack of ground-truth data. Afterwards, we compute the Principal Component Analysis over post-classification images to detect deforestation on the eastern side of So Paulo urban area. Our approach provides a way to automatically select data samples, while it also suggests a category. The user provides the category data (labelling task) to the selected pixels which are further used as training data in the final classification step. We applied the algorithm over four 6-channels multispectral images of the Landsat 5/TM device and we classified the pixels in two categories (???forest??? and ???non-forest???) for the years of 1986, 1996, 2003, and 2011. The change detection, is computed through an automatic threshold applied on the post-classification images. We were able to quantify de deforestation suffered by the eastern side of Sao Paulo city along the years. Our results show that the remaining 31% of forest in 1986 reach a minimum of 25% in 2003, but afterwards it recovered to 27% of the area in 2011.
机译:图像分类的性能通常取决于用作训练样本的标记数据集的质量。在遥感的情况下,获取地面真相数据可能是一项困难且昂贵的任务,因为这取决于对感兴趣区域进行的全面调查,而标记任务必须由经验丰富的专业人员来执行。另一方面,基于主动学习的算法可以帮助克服训练样本的不足。我们提出了一种基于主动学习的内聚算法,用于图像分类和变化检测,可以解决缺乏真实数据的问题。然后,我们对分类后的图像进行主成分分析,以检测So Paulo市区东部的森林砍伐情况。我们的方法提供了一种自动选择数据样本的方法,同时还建议了一个类别。用户将类别数据(标记任务)提供给所选像素,这些像素在最终分类步骤中进一步用作训练数据。我们将该算法应用于Landsat 5 / TM设备的四张6通道多光谱图像,并在1986年内将像素分为两类(“森林”和“非森林”)。 ,1996、2003和2011。更改检测是通过应用于分类后图像的自动阈值来计算的。我们能够对多年来圣保罗市东部遭受的森林砍伐进行量化。我们的结果表明,1986年剩余的31%的森林在2003年达到最低25%,但此后在2011年恢复到27%的面积。

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