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SEASONAL VARIATION OF LAND COVER CLASSIFICATION ACCURACY OF LANDSAT 8 IMAGES IN BURKINA FASO

机译:土地覆盖土地覆盖分类准确度的季节变化8张图片在布基纳法索

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In the seasonal tropics, vegetation shows large reflectance variation because of phenology, which complicates land cover change monitoring. Ideally, multi-temporal images for change monitoring should be from the same season, but availability of cloud-free images is limited in wet season in comparison to dry season. Our aim was to investigate how land cover classification accuracy depends on the season in southern Burkina Faso by analyzing 14 Landsat 8 OLI images from April 2013 to April 2014. Because all the images were acquired within one year, we assumed that most of the observed variation between the images was due to phenology. All the images were cloud masked and atmospherically corrected. Field data was collected from 160 field plots located within a 10 km × 10 km study area between December 2013 and February 2014. The plots were classified to closed forest, open forest and cropland, and used as training and validation data. Random forest classifier was employed for classifications. According to the results, there is a tendency for higher classification accuracy towards the dry season. The highest classification accuracy was provided by an image from December, which corresponds to the dry season and minimum NDVI period. In contrast, an image from October, which corresponds to the wet season and maximum NDVI period provided the lowest accuracy. Furthermore, the multi-temporal classification based on dry and wet season images had higher accuracy than single image classifications, but the improvement was small because seasonal changes affect similarly to the different land cover classes.
机译:在季节性的热带地区,植被显示由于候选的大反射率变化,使土地覆盖变更监测复杂化。理想情况下,改变监控的多时间图像应该是同一季节,但与旱季相比,无云图像的可用性在湿季有限。我们的目的是调查土地覆盖分类准确性如何通过分析2013年4月至2014年4月的14个Landsat 8 Oli图像取决于南伯纳法索的季节。因为所有图像在一年内获得,我们认为大多数观察到的变化在图像之间是由于候选。所有图像都是遮蔽和大气纠正的云。现场数据从位于2013年12月和2014年2月之间的10公里×10公里的学习区域内收集了160个字节。该地块被分类为封闭的森林,开放的森林和农作物,并用作培训和验证数据。随机森林分类器用于分类。根据结果​​,对旱季的较高分类精度倾向于趋势。分类准确性最高由12月的图像提供,该图像与旱季和最低NDVI期间相对应。相比之下,来自10月份的图像,它对应于潮湿季节和最大NDVI时期提供了最低的精度。此外,基于干燥和潮湿季节图像的多时间分类具有比单个图像分类更高的精度,但是改善小,因为季节性变化与不同的陆地覆盖类相似。

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