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A New Method for Modifying Thresholds in the Classification of Tree Models for Mapping Aquatic Vegetation in Taihu Lake with Satellite Images

机译:利用卫星图像绘制太湖水生植被树模型分类中阈值修改的新方法

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Aquatic vegetation plays an important role in maintaining the balance of lake ecosystems. Thus, classifying and mapping aquatic vegetation is a priority for lake management. Classification tree (CT) approaches have been used successfully to map aquatic vegetation from spectral indices obtained from remotely sensed images. However, due to the effects of extrinsic and intrinsic factors, applying a CT model developed for imagery from one date to imagery from another date or a different dataset likely would reduce the classification accuracy. In this study, three spectral features (SFs) were selected to develop a CT model for identifying aquatic vegetation in Taihu Lake. Three traditional CT models with three SFs were developed using CT analysis based on satellite images acquired on 11 July, 16 August and 26 September 2013, and corresponding ground-truth samples, from the Huangjing-1A/B Charge-Coupled Device (HJ-CCD) images, environment and disaster reduction small satellites that were launched by China Center for Resources Satellite Data and Application (CRESDA). The overall accuracies of traditional CT models were 82%, 80% and 84%. We then tested two methods to modify CT model thresholds to adjust the traditional CT models based on image date to determine if the results would enable us to map and classify aquatic vegetation for periods when no ground-based data were available. We assessed the results with ground-truth samples and area agreement with traditional CT models. Results showed that CT models modified from a linear adjustment based on the relationship between ranked values of SFs between two image dates produced map accuracies comparable with those obtained from the traditional CT models and suggest that the method we proposed is feasible for mapping aquatic vegetation types in lakes when ground data are not available.
机译:水生植被在维持湖泊生态系统平衡方面发挥着重要作用。因此,对水生植被进行分类和制图是湖泊管理的重点。分类树(CT)方法已成功地用于从遥感影像获得的光谱指数中绘制水生植被。但是,由于外部因素和内在因素的影响,将为某个日期的图像开发的CT模型应用于另一日期的图像或其他数据集的CT模型可能会降低分类的准确性。在这项研究中,选择了三个光谱特征(SFs)来开发用于识别太湖水生植被的CT模型。使用CT分析,基于2013年7月11日,8月16日和9月26日采集的卫星图像以及相应的地面样品(来自黄井1A / B电荷耦合器件(HJ-CCD)),开发了具有三个SF的三个传统CT模型由中国资源卫星数据与应用中心(CRESDA)发射的图像,环境和减灾小卫星。传统CT模型的总体准确度分别为82%,80%和84%。然后,我们测试了两种修改CT模型阈值的方法,以根据图像日期调整传统的CT模型,以确定结果是否使我们能够在没有可用地面数据的时期内对水生植被进行地图绘制和分类。我们使用地面真实样本评估了结果,并与传统CT模型进行了面积一致性评估。结果表明,基于两个图像日期之间的SFs排序值之间的关系,通过线性调整修改的CT模型所产生的地图准确性可与传统CT模型获得的地图准确性相提并论,这表明我们提出的方法可用于绘制水生植被类型图地面数据不可用时的湖泊。

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