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首页> 外文期刊>Canadian Journal of Remote Sensing >The Automatic Detection of Fire Scar in Alaska using Multi-Temporal PALSAR Polarimetric SAR Data
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The Automatic Detection of Fire Scar in Alaska using Multi-Temporal PALSAR Polarimetric SAR Data

机译:利用多时相PALSAR极化SAR数据自动检测阿拉斯加的火痕

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The existing fire scar detection methods based on multi-temporal analysis only used the difference in either backscattering intensity or polarimetric characteristics between the pre- and post-fire PolSAR data to calculate the difference image (DI), and then applied an object-based image analysis approach (OBIA) to generate the fire scar binary map. These methods all ignored the polarimetric correlation between both the pre- and post-fire PolSAR data. And many parameters of the OBIA method were determined empirically. Therefore, this study proposes a new detection method, which integrates the Hotelling-Lawley trace (HLT) statistic with a hierarchical automatic image segmentation method (GGKI-MRF). The HLT can simultaneously capture changes in both polarimetry and intensity, which helps to distinguish between burned and unburned areas. And the GGKI-MRF method is developed by combining the generalized Gaussian-based Kittler-Illingworth (GG-KI) thresholding with Markov Random Field (MRF) model, which has a good performance in reducing the isolate points (false alarms) and the omission errors. The experimental results from multi-temporal and polarimetric PALSAR PolSAR data show that the proposed method can achieve high detection accuracy (i.e., the kappa coefficient of 0.81 and the overall accuracy up to 0.92).
机译:现有的基于多时相分析的火灾疤痕检测方法仅使用火灾前后的PolSAR数据之间的反向散射强度或偏振特性差异来计算差异图像(DI),然后应用基于对象的图像分析方法(OBIA)来生成火疤二值图。这些方法都忽略了发射前和发射后PolSAR数据之间的极化相关性。并根据经验确定了OBIA方法的许多参数。因此,本研究提出了一种新的检测方法,该方法将Hotelling-Lawley跟踪(HLT)统计信息与分层自动图像分割方法(GGKI-MRF)相集成。 HLT可以同时捕获偏振光和强度的变化,这有助于区分燃烧区域和未燃烧区域。通过将基于广义高斯的基特勒-伊林沃思(GG-KI)阈值化与马尔可夫随机场(MRF)模型相结合,开发了GGKI-MRF方法,该方法在减少隔离点(虚警)和遗漏方面具有良好的性能。错误。多时相和极化PALSAR PolSAR数据的实验结果表明,该方法可以实现较高的检测精度(即kappa系数为0.81,整体精度高达0.92)。

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