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Learning and Transferring Convolutional Neural Network Knowledge to Ocean Front Recognition

机译:卷积神经网络知识的学习和转移到海洋识别

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摘要

In this letter, we investigated how to apply a deep learning method, in particular convolutional neural networks (CNNs), to an ocean front recognition task. Exploring deep CNNs knowledge to ocean front recognition is a challenging task, because the training data is very scarce. This letter overcomes this challenge using a sequence of transfer learning steps via fine-tuning. The core idea is to extract deep knowledge of the CNN model from a large data set and then transfer the knowledge to our ocean front recognition task on limited remote sensing (RS) images. We conducted experiments on two different RS image data sets, with different visual properties, i.e., colorful and gray-level data, which were both downloaded from the National Oceanic and Atmospheric Administration (NOAA). The proposed method was compared with the conventional handcraft descriptor with bag-of-visual-words, original CNN model, and last-layer fine-tuned CNN model. Our method showed a significantly higher accuracy than other methods in both datasets.
机译:在这封信中,我们研究了如何将深度学习方法(特别是卷积神经网络(CNN))应用于海滨识别任务。探索CNN的深层知识以识别海洋前沿是一项艰巨的任务,因为培训数据非常稀缺。这封信通过微调的一系列学习步骤克服了这一挑战。核心思想是从大量数据集中提取CNN模型的深层知识,然后将其知识转移到我们在有限遥感(RS)图像上的海面识别任务中。我们对两个不同的具有不同视觉特性的RS图像数据集进行了实验,即彩色和灰度数据,这两个数据集均从美国国家海洋与大气管理局(NOAA)下载。将提出的方法与带有视觉词袋,原始CNN模型和最后一层微调CNN模型的常规手工描述符进行了比较。在两个数据集中,我们的方法均显示出比其他方法更高的准确性。

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