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Object-Based Classification of Ikonos Imagery for Mapping Large-Scale Vegetation Communities in Urban Areas

机译:基于对象的Ikonos影像分类,用于绘制城市中的大型植被群落

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Effective assessment of biodiversity in cities requires detailed vegetation maps. To date, most remote sensing of urban vegetation has focused on thematically coarse land cover products. Detailed habitat maps are created by manual interpretation of aerial photographs, but this is time consuming and costly at large scale. To address this issue, we tested the effectiveness of object-based classifications that use automated image segmentation to extract meaningful ground features from imagery. We applied these techniques to very high resolution multispectral Ikonos images to produce vegetation community maps in Dunedin City, New Zealand. An Ikonos image was orthorectified and a multi-scale segmentation algorithm used to produce a hierarchical network of image objects. The upper level included four coarse strata: industrial/commercial (commercial buildings), residential (houses and backyard private gardens), vegetation (vegetation patches larger than 0.8/1ha), and water. We focused on the vegetation stratum that was segmented at more detailed level to extract and classify fifteen classes of vegetation communities. The first classification yielded a moderate overall classification accuracy (64%, κ = 0.52), which led us to consider a simplified classification with ten vegetation classes. The overall classification accuracy from the simplified classification was 77% with a κ value close to the excellent range (κ = 0.74). These results compared favourably with similar studies in other environments. We conclude that this approach does not provide maps as detailed as those produced by manually interpreting aerial photographs, but it can still extract ecologically significant classes. It is an efficient way to generate accurate and detailed maps in significantly shorter time. The final map accuracy could be improved by integrating segmentation, automated and manual classification in the mapping process, especially when considering important vegetation classes with limited spectral contrast.
机译:对城市中生物多样性的有效评估需要详细的植被图。迄今为止,大多数对城市植被的遥感都集中在主题粗糙的土地覆盖产品上。详细的栖息地地图是通过手动解释航空照片来创建的,但是这既费时又费钱。为了解决此问题,我们测试了基于对象的分类的有效性,该分类使用自动图像分割从图像中提取有意义的地面特征。我们将这些技术应用于高分辨率的多光谱Ikonos图像,以生成新西兰达尼丁市的植被群落图。对Ikonos图像进行了正射校正,并使用了多尺度分割算法来生成图像对象的分层网络。上层包括四个粗地层:工业/商业(商业建筑),住宅(房屋和后院私人花园),植被(大于0.8 / 1ha的植被斑块)和水。我们专注于更详细细分的植被地层,以提取和分类十五类植被群落。第一次分类产生了中等的总体分类精度(64%,κ= 0.52),这使我们考虑了十种植被分类的简化分类。简化分类的总体分类准确性为77%,且κ值接近出色范围(κ= 0.74)。这些结果优于其他环境中的类似研究。我们得出的结论是,这种方法所提供的地图不如手动解释航拍照片所产生的地图那样详细,但仍可以提取具有生态意义的类别。这是在短得多的时间内生成准确且详细的地图的有效方法。通过在地图绘制过程中集成分段,自动和手动分类,可以提高最终地图的准确性,尤其是在考虑光谱对比度有限的重要植被类别时。

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