Seasonal effect on the accuracy of Land use/Land cover classification in the Bilate Sub-basin, Abaya-Chamo Basin, Rift valley Lakes Basin of Ethiopia.

Alemeshet Kebede Yimer, A. Haile, Samuel Dagalo Hatiye, Assefa Gedle Azeref
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引用次数: 4

Abstract

A correct and timely land use/land cover (LULC) classification provides indispensable information for the effective management of environmental and natural resources. However, earlier studies mapped the LULC map of Bilate Sub-basin using remote sensing images that were acquired for a single season. Hence, these studies did not consider the seasonal effects on the accuracy of LULC classification. Therefore, the objective of this study was to evaluate changes inclassification accuracy for images acquired during wet and dry seasons in the Bilate Sub-basin. LULC of the study area was classified using the Landsat 8 satellite imageries. Based on field observations, we classified the LULC of the study area into 9 dominant classes. The classification for the two seasons resulted in a noticeable difference between the LULC composition of the study area because of seasonal differences in the classification accuracy. The overall accuracy of theLULC maps was 80%for the wet season and 90% for the dry season with Kappa coefficient values of 0.8 and 0.9 respectively. Therefore, the two seasons showed a significant difference in the overall accuracy of the classification. However, we discovered that when the classification accuracy was tested locally, that is for individual pixels, the results were not the same. In Bilate Sub-basin, several pixels (14.71%) were assigned to different LULC classes on the two seasonsmaps while 85.29% of the LULC classes remained unaltered in the two maps. According to the classification results, the season had a noticeable effect on the accuracy of LULC classification. This suggests that for LULC classification, multitemporal images should be used rather than a single remote sensing image.
埃塞俄比亚Bilate亚盆地、Abaya-Chamo盆地、裂谷湖盆地土地利用/土地覆被分类精度的季节效应
正确和及时的土地利用/土地覆盖分类为有效管理环境和自然资源提供了不可或缺的信息。然而,早期的研究使用单一季节的遥感图像绘制了Bilate子盆地的LULC地图。因此,这些研究没有考虑季节对LULC分类准确性的影响。因此,本研究的目的是评估在湿润季和干燥季获得的图像分类精度的变化。利用Landsat 8卫星图像对研究区土地利用面积进行分类。根据野外观测结果,将研究区LULC划分为9个优势类。由于季节分类精度的差异,两个季节的分类导致研究区LULC组成存在显著差异。该ulc地图的总体精度在雨季为80%,旱季为90%,Kappa系数分别为0.8和0.9。因此,两个季节在分类的整体准确率上存在显著差异。然而,我们发现当局部测试分类精度时,即单个像素,结果并不相同。在双酸亚盆地,有14.71%的像元在两个季节图上被划分为不同的LULC类别,85.29%的像元在两个季节图上保持不变。从分类结果来看,季节对LULC分类精度有显著影响。这表明,对于LULC分类,应使用多时段图像,而不是单一的遥感图像。
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