An integrated hierarchical classification and machine learning approach for mapping land use and land cover in complex social-ecological systems

G. Ojwang, J. Ogutu, Mohammed Y. Said, M. Ojwala, S. Kifugo, Francesca Verones, B. Graae, R. Buitenwerf, Han Olff
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Abstract

Mapping land use and land cover (LULC) using remote sensing is fundamental to environmental monitoring, spatial planning and characterising drivers of change in landscapes. We develop a new, general and versatile approach for mapping LULC in landscapes with relatively gradual transition between LULC categories such as African savannas. The approach integrates a well-tested hierarchical classification system with the computationally efficient random forest (RF) classifier and produces detailed, accurate and consistent classification of structural vegetation heterogeneity and density and anthropogenic land use. We use Landsat 8 OLI imagery to illustrate this approach for the Extended Greater Masai Mara Ecosystem (EGMME) in southwestern Kenya. We stratified the landscape into eight relatively homogeneous zones, systematically inspected the imagery and randomly allocated 1,697 training sites, 556 of which were ground-truthed, proportionately to the area of each zone. We directly assessed the accuracy of the visually classified image. Accuracy was high and averaged 88.1% (80.5%–91.7%) across all the zones and 89.1% (50%–100%) across all the classes. We applied the RF classifier to randomly selected samples from the original training dataset, separately for each zone and the EGMME. We evaluated the overall and class-specific accuracy and computational efficiency using the Out-of-Bag (OOB) error. Overall accuracy (79.3%–97.4%) varied across zones but was higher whereas the class-specific accuracy (25.4%–98.1%) was lower than that for the EGMME (80.2%). The hierarchical classifier identified 35 LULC classes which we aggregated into 18 intermediate mosaics and further into five more general categories. The open grassed shrubland (21.8%), sparse shrubbed grassland (10.4%) and small-scale cultivation (13.3%) dominated at the detailed level, grassed shrubland (31.9%) and shrubbed grassland (28.9%) at the intermediate level, and grassland (35.7%), shrubland (35.3%) and woodland (12.5%) at the general level. Our granular LULC map for the EGMME is sufficiently accurate for important practical purposes such as land use spatial planning, habitat suitability assessment and temporal change detection. The extensive ground-truthing data, sample site photos and classified maps can contribute to wider validation efforts at regional to global scales.
绘制复杂社会生态系统中土地利用和土地覆被图的分层分类和机器学习综合方法
利用遥感技术绘制土地利用和土地覆盖(LULC)图对于环境监测、空间规划和描述地貌变化的驱动因素至关重要。我们开发了一种新的、通用的多功能方法,用于绘制土地利用和土地覆被类别之间相对渐进过渡的地貌(如非洲稀树草原)的土地利用和土地覆被图。该方法将久经考验的分层分类系统与计算效率极高的随机森林(RF)分类器相结合,对结构性植被异质性和密度以及人为土地利用进行了详细、准确和一致的分类。我们使用 Landsat 8 OLI 图像来说明肯尼亚西南部扩展大马赛马拉生态系统(EGMME)的这一方法。我们将地貌划分为八个相对均匀的区域,系统地检查了图像,并按照每个区域的面积比例随机分配了 1,697 个训练点,其中 556 个进行了地面勘测。我们直接评估了视觉分类图像的准确性。准确率很高,所有区域的平均准确率为 88.1%(80.5%-91.7%),所有类别的平均准确率为 89.1%(50%-100%)。我们将 RF 分类器应用于从原始训练数据集中随机抽取的样本,分别用于每个区域和 EGMME。我们使用袋外误差(OOB)评估了总体和特定类别的准确性和计算效率。各区的总体准确率(79.3%-97.4%)各不相同,但都较高,而具体类别的准确率(25.4%-98.1%)则低于 EGMME 的准确率(80.2%)。分层分类器识别出 35 个土地利用、土地利用变化和土地利用变化类别,我们将其汇总为 18 个中间镶嵌类别,并进一步划分为 5 个更一般的类别。在详细层次上,开阔的草灌木林地(21.8%)、稀疏的灌木草地(10.4%)和小规模耕地(13.3%)占主导地位;在中间层次上,草灌木林地(31.9%)和灌木草地(28.9%)占主导地位;在一般层次上,草地(35.7%)、灌木林地(35.3%)和林地(12.5%)占主导地位。对于土地利用空间规划、栖息地适宜性评估和时间变化检测等重要的实际用途而言,我们为东非大地测量监测中心绘制的细粒度土地利用、土地利用变化和植被变化图具有足够的准确性。大量的地面实况数据、样地照片和分类地图有助于在区域到全球范围内开展更广泛的验证工作。
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