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Upwelling Detection in AVHRR Sea Surface Temperature (SST) Images using Neural-Network Framework

机译:使用神经网络框架在AVHRR海面温度(SST)图像中的升高检测

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In this paper we present a novel method for the detection and segmentation of upwelling regions in AVHRR SST data. We demonstrate the effectiveness of the algorithm on data from the Monterey Bay region, with prominent upwelling regions. A byproduct of the upwelling detection algorithm is the detection of frontal boundaries. The process is started with the training of a feed-forward back-propagation neural network for the purpose of finding regions of "uniform" temperatures, resulting in labeled clusters. Then statistical information is gathered from the various clusters. A quantitative criterion is developed that is used to test the existence of prominent upwelling region followed by detection and segmentation. The algorithm is applied on data from July 2003 to September 2003 and their results presented.
机译:在本文中,我们提出了一种新的方法,用于在AVHRR SST数据中检测和分割的升高区域。我们展示了蒙特雷湾地区数据算法的有效性,具有突出的上升区域。覆络检测算法的副产品是对正边界的检测。该过程以前馈回传播神经网络的训练开始,以寻找“均匀”温度的区域,从而产生标记的簇。然后从各种群集收集统计信息。开发了定量标准,用于测试突出的上升区域的存在,然后进行检测和分割。该算法于2003年7月至2003年9月的数据上应用了数据,结果呈现。

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