Empirical Evaluation on Utilizing CNN-features for Seismic Patch Classification

Chun‐Xia Zhang, Xiaoli Wei, Sang-Woon Kim
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引用次数: 1

Abstract

This paper empirically evaluates two kinds of features, which are extracted, respectively, with traditional statistical methods and convolutional neural networks (CNNs), in order to improve the performance of seismic patch image classification. In the latter case, feature vectors, named “CNN-features”, were extracted from one trained CNN model, and were then used to learn existing classifiers, such as support vector machines. In this case, to learn the CNN model, a technique of transfer learning using synthetic seismic patch data in the source domain, and real-world patch data in the target domain, was applied. The experimental results show that CNN-features lead to some improvements in the classification performance. By analyzing the data complexity measures, the CNN-features are found to have the strongest discriminant capabilities. Furthermore, the transfer learning technique alleviates the problems of long processing times and the lack of learning data.
利用cnn特征进行地震斑块分类的实证评价
本文对传统统计方法和卷积神经网络(cnn)分别提取的两类特征进行了实证评价,以提高地震斑块图像分类的性能。在后一种情况下,从一个训练好的CNN模型中提取特征向量,称为“CNN-features”,然后用于学习现有的分类器,如支持向量机。在这种情况下,为了学习CNN模型,我们采用了一种迁移学习技术,在源域使用合成的地震patch数据,在目标域使用真实的patch数据。实验结果表明,cnn特征对分类性能有一定的改善。通过对数据复杂度度量的分析,发现cnn特征具有最强的判别能力。此外,迁移学习技术还缓解了处理时间长和学习数据缺乏的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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