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Abnormal events detection using deep neural networks: application to extreme sea surface temperature detection in the Red Sea

机译:使用深神经网络检测异常事件检测:在红海中的极端海面温度检测应用

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摘要

We present a method based on deep learning for detecting and localizing abnormal/extreme events in sea surface temperature (SST) of the Red Sea images using training samples of normal events only. The method operates in two stages; the first one involves features extraction from each patch of the SST input image using the first two convolutional layers extracted from a pretrained convolutional neural network. In the second stage, two methods are used for training the model from the normal training data. The first method uses one-class support vector machine (1-SVM) classifier that allows a fast and robust abnormal detection in the presence of outliers in the training dataset. In the second method, a Gaussian model is defined on the Mahalanobis distances between all normal training data. Experimental tests are conducted on satellite-derived SST data of the Red Sea spanning for a period of 31 years (1985-2015). Our results suggest that the Gaussian model of Mahalanobis distances outperformed 1-SVM by providing better performance in terms of sensitivity and specificity. (C) 2019 SPIE and IS&T
机译:我们介绍了一种基于深度学习的方法,用于使用正常事件的训练样本来检测和定位海表面温度(SST)中的异常/极端事件的异常/极端事件。该方法以两个阶段运行;第一个涉及使用从普雷雷卷积神经网络中提取的前两个卷积层从SST输入图像的每个贴片提取的特征提取。在第二阶段,两种方法用于从正常训练数据培训模型。第一个方法使用单级支持向量机(1-SVM)分类器,允许在训练数据集中的异常值存在中快速且强大的异常检测。在第二种方法中,在所有正常训练数据之间的Mahalanobis距离上定义了高斯模型。在跨越31年(1985-2015)的红海的卫星衍生SST数据上进行了实验试验。我们的研究结果表明,Mahalanobis的高斯模型通过在敏感性和特异性方面提供更好的性能来实现1-SVM。 (c)2019 SPIE和IS&T

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