来自大别山深成侵入岩图像深度迁移学习的可解释性研究
作者:
作者单位:

作者简介:

通讯作者:

中图分类号:

基金项目:

本文为国家自然科学基金资助项目(编号:41820104007,42072321,42202328)的成果


Interpretability of the deep transfer learning with images of plutonic intrusive rocks collected from the Dabie Mountains
Author:
Affiliation:

Fund Project:

单位:
  • 摘要
  • |
  • 图/表
  • |
  • 访问统计
  • |
  • 参考文献
  • |
  • 相似文献
  • |
  • 引证文献
  • |
  • 资源附件
  • |
  • 文章评论
    摘要:

    岩石图像识别是以深度学习为代表的感知智能在地质领域的典型应用场景。已有研究显示网络结构简单的深度卷积神经网络能够在岩石图像上取得比复杂网络结构高的分类准确率。这与ImageNet数据集上网络结构越深越好的趋势相悖。如何解释这一现象?深成侵入岩为显晶质,自形—半自形粒状结构,块状构造,其分类的依据是其矿物成分及相对含量。大别山地区岩浆活动广泛,中生代深成侵入岩广泛出露。岩石类型包括超镁铁质岩类、辉长岩类、闪长岩类、正长岩类、二长岩类和花岗岩类,基本覆盖IUGS推荐的深成侵入岩分类方案中的岩石类型。选取大别山地区中生代深成岩图像开展不同网络结构预训练模型迁移学习对比试验,能够专注于深度学习对矿物成分特征的学习解释,降低构造因素的影响。借助局部可理解的模型解释技术和特征图可视化技术,分别从全连接层分类决策区域可视化和卷积隐层可视化两方面对深度学习模型开展可解释性研究。结果表明简单网络结构的卷积神经网络能够提取不同矿物所表现出的颜色特征以及不同矿物组合所表现出的纹理特征。AlexNet模型的削减试验进一步证明:对于岩石图像深度学习,网络结构并不总是越深越好。

    Abstract:

    Rock images recognition is a classic appilcation scenario of the perceptual intelligence represented by deep learning in geosciences. Previous studies on the identification of rock images have shown that the simpler architecture of deep convolutional neural networks model can achieve the same or higher accuracy than the complexer. It is a paradox which is contrary to the research revealed that increasing the depth of a model can improve its recognition accuracy on the ImageNet dataset. How to explain this phenomenon? The interpretability of the various ImageNet- pretrained models with plutonic rock images can give a explain to the phenomenon. Plutonic intrusive rocks are crystalline, euhedral—subhedral granular texture and massive structure. The classification of them is based on their mineral composition and relative content. Magmatic activity is extensive in Dabie Mountains , and Mesozoic plutonic intrusive rocks are widely exposed. The rock types include ultramafic intrusion, gabbroid, dioritoid, syenitoid and granitoid, which basically cover the rock types in the classification scheme of plutonic intrusive rocks recommended by IUGS. The plutonic intrusive rock images were collected from the Dabie Mountains and were used to train using various pre- trained deep CNN. Using the local interpretable model—agnostic explanation (LIME) and the convnet visualization, the visual explanations for the feature extraction operation were given. Our experiments demonstrated that the simple struture convolutional neural networks model also can extract the color features and the texture features. For deep learing of rock images, the network structure is not always the deeper the better.

    参考文献
    相似文献
    引证文献
引用本文

陈忠良,袁峰,李晓晖,郑超杰.2023.来自大别山深成侵入岩图像深度迁移学习的可解释性研究[J].地质论评,69(6):2263-2273,[DOI].
CHEN Zhongliang, YUAN Feng, LI Xiaohui, ZHENG Chaojie.2023. Interpretability of the deep transfer learning with images of plutonic intrusive rocks collected from the Dabie Mountains[J]. Geological Review,69(6):2263-2273.

复制
分享
文章指标
  • 点击次数:
  • 下载次数:
  • HTML阅读次数:
  • 引用次数:
历史
  • 收稿日期:2023-03-09
  • 最后修改日期:2023-06-03
  • 录用日期:
  • 在线发布日期: 2023-11-20
  • 出版日期: