首页> 外文会议>International Symposium on Remote Sensing of Environment >RICE-PLANDTED AREA EXTRACTION BY TIME SERIES ANALYSIS OF ENVTSAT ASAR WS DATA USING A PHENOLOGY-BASED CLASSIFICATION APPROACH: A CASE STUDY FOR RED RIVER DELTA, VIETNAM
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RICE-PLANDTED AREA EXTRACTION BY TIME SERIES ANALYSIS OF ENVTSAT ASAR WS DATA USING A PHENOLOGY-BASED CLASSIFICATION APPROACH: A CASE STUDY FOR RED RIVER DELTA, VIETNAM

机译:基于物候分类方法的ENVTSAT ASAR WS数据时序分析提取水稻P积面积:以越南红河三角洲为例

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Recent studies have shown the potential of Synthetic Aperture Radars (SAR) for mapping of rice fields and some other vegetation types. For rice field classification, conventional classification techniques have been mostly used including manual threshold-based and supervised classification approaches. The challenge of the threshold-based approach is to find acceptable thresholds to be used for each individual SAR scene. Furthermore, the influence of local incidence angle on backscatter hinders using a single threshold for the entire scene. Similarly, the supervised classification approach requires different training samples for different output classes. In case of rice crop, supervised classification using temporal data requires different training datasets to perform classification procedure which might lead to inconsistent mapping results. In this study we present an automatic method to identify rice crop areas by extracting phonological parameters after performing an empirical regression-based normalization of the backscatter to a reference incidence angle. The method is evaluated in the Red River Delta (RRD), Vietnam using the time series of ENVISAT Advanced SAR (ASAR) Wide Swath (WS) mode data. The results of rice mapping algorithm compared to the reference data indicate the Completeness (User accuracy), Correctness (Producer accuracy) and Quality (Overall accuracies) of 88.8%, 92.5 % and 83.9 % respectively. The total area of the classified rice fields corresponds to the total rice cultivation areas given by the official statistics in Vietnam (R~2 = 0.96). The results indicates that applying a phenology-based classification approach using backscatter time series in optimal incidence angle normalization can achieve high classification accuracies. In addition, the method is not only useful for large scale early mapping of rice fields in the Red River Delta using the current and future C-band Sentinal-IA&B backscatter data but also might be applied for other rice cultivation areas.
机译:最近的研究表明,合成孔径雷达(SAR)在绘制稻田和其他一些植被类型方面具有潜力。对于稻田分类,已广泛使用常规分类技术,包括基于手动阈值和监督分类的方法。基于阈值的方法的挑战是找到要用于每个单独的SAR场景的可接受阈值。此外,局部入射角对反向散射的影响阻碍了对整个场景使用单个阈值。同样,监督分类方法要求针对不同的输出类别使用不同的训练样本。对于水稻作物,使用时态数据进行监督分类需要不同的训练数据集来执行分类过程,这可能会导致映射结果不一致。在这项研究中,我们提出了一种自动方法,该方法通过在将基于反向回归的经验归一化归一化为参考入射角后提取语音参数来识别水稻作物区域。使用ENVISAT高级SAR(ASAR)宽幅(WS)模式数据的时间序列,在越南的红河三角洲(RRD)中对该方法进行了评估。水稻作图算法与参考数据的比较结果表明,完整性(用户准确性),正确性(生产者准确性)和质量(总体准确性)分别为88.8%,92.5%和83.9%。分类稻田的总面积相当于越南官方统计的稻米总种植面积(R〜2 = 0.96)。结果表明,在最佳入射角归一化中应用反向散射时间序列的基于物候分类的方法可以实现较高的分类精度。此外,该方法不仅适用于使用当前和将来的C波段Sentinal-IA&B反向散射数据对红河三角洲的稻田进行大规模早期制图,而且还可用于其他水稻种植区。

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