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首页> 外文期刊>GIScience & remote sensing >Object-based urban land cover classification using rule inheritance over very high-resolution multisensor and multitemporal data
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Object-based urban land cover classification using rule inheritance over very high-resolution multisensor and multitemporal data

机译:基于规则的超高分辨率多传感器和多时间数据继承的基于对象的城市土地覆盖分类

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摘要

Very high spatial and temporal resolution remote sensing data facilitate mapping highly complex and diverse urban environments. This study analyzed and demonstrated the usefulness of combined high-resolution aerial digital images and elevation data, and its processing using object-based image analysis for mapping urban land covers and quantifying buildings. It is observed that mapping heterogeneous features across large urban areas is time consuming and challenging. This study presents and demonstrates an approach for formulating an optimal land cover classification rule set over small representative training urban area image, and its subsequent transfer to the multisensor, multitemporal images. The classification results over the training area showed an overall accuracy of 96%, and the application of rule set to different sensor images of other test areas resulted in reduced accuracies of 91% for the same sensor, 90% and 86% for the different sensors temporal data. The comparison of reference and classified buildings showed +/- 4% detection errors. Classification through a transferred rule set reduced the classification accuracy by about 5%-10%. However, the trade-off for this accuracy drop was about a 75% reduction in processing time for performing classification in the training area. The factors influencing the classification accuracies were mainly the shadow and temporal changes in the class characteristics.
机译:很高的时空分辨率遥感数据有助于绘制高度复杂多样的城市环境。这项研究分析并证明了组合高分辨率航空数字图像和高程数据的有用性,以及使用基于对象的图像分析对城市土地覆盖进行制图和量化建筑物的处理。可以看出,在大型城市区域内绘制异质要素非常耗时且具有挑战性。这项研究提出并演示了一种方法,该方法可针对小型代表性训练城市图像制定最佳土地覆盖分类规则集,并将其随后转移至多传感器,多时间图像。训练区域上的分类结果显示总体准确性为96%,将规则集应用于其他测试区域的不同传感器图像会导致同一传感器的准确度降低了91%,不同传感器的准确性降低了90%和86%时间数据。参考建筑物和分类建筑物的比较显示出+/- 4%的检测误差。通过转移的规则集进行分类会使分类准确性降低约5%-10%。但是,此精度下降的权衡是在训练区域中执行分类所需的处理时间减少了约75%。影响分类准确性的因素主要是班级特征的阴影和时间变化。

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