Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution

To enhance the precision and efficiency of petrographic thin section image classification and reduce the subjectivity resulting from manual classification methods, a new classification model (DC-PC-Dilated-IR-V2) in term of the deep convolutional network is constructed in this study. In the DC-PC-Di...

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Main Authors: Shaowei Pan, Xingxing Cheng, Wenjing Fan
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10879401/
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author Shaowei Pan
Xingxing Cheng
Wenjing Fan
author_facet Shaowei Pan
Xingxing Cheng
Wenjing Fan
author_sort Shaowei Pan
collection DOAJ
description To enhance the precision and efficiency of petrographic thin section image classification and reduce the subjectivity resulting from manual classification methods, a new classification model (DC-PC-Dilated-IR-V2) in term of the deep convolutional network is constructed in this study. In the DC-PC-Dilated-IR-V2 model, the depthwise separable convolution (DSC) is applied to avoid the increase problem of parameters and calculations due to too many convolutional layers; the attention module is introduced to obtain a better representation of characteristics through information fusion and weighting, which allows the model to focus on the target area of thin section images; in addition, the dilated convolution is taken in, which enables the model to extract more global characteristics and higher-level semantic characteristics without increasing the convolution parameters, thereby improving the classification precision of the model. The model was evaluated using a dataset comprising 4000 thin section images, classified into categories such as small pores with fine throats, medium pores, feldspar dissolution pores, dissolution-enlarged pores, and microfractures. Our extensive experiments demonstrate the superior performance of DC-PC-Dilated-IR-V2 compared to other classifiers, including back propagation (BP) neural networks, support vector machines (SVM), AlexNet, VGG-16, ResNet-101, ResNeXt-101, and DenseNet. Specifically, DC-PC-Dilated-IR-V2 achieves the highest accuracy (99.84%), Macro_F1 score (0.9787), and Kappa coefficient (0.9763) among all tested methods. Additionally, it significantly reduces the parameter count and computational load with only 15.9 million parameters and 1259 billion FLOPs, ensuring efficiency without sacrificing accuracy. The average training time is also significantly lower than that of its counterparts. These improvements highlight the potential of DC-PC-Dilated-IR-V2 for more efficient and accurate petrographic image classification.
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spelling doaj-art-69a34c618e614cd78ffb1c852bbba57e2025-08-20T03:01:11ZengIEEEIEEE Access2169-35362025-01-0113287892879810.1109/ACCESS.2025.354047710879401Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated ConvolutionShaowei Pan0https://orcid.org/0000-0003-0492-2937Xingxing Cheng1https://orcid.org/0009-0004-0456-6367Wenjing Fan2School of Computer Science, Xi’an Shiyou University, Xi’an, Shaanxi, ChinaSchool of Computer Science, Xi’an Shiyou University, Xi’an, Shaanxi, ChinaSchool of Computer Science, Xi’an Shiyou University, Xi’an, Shaanxi, ChinaTo enhance the precision and efficiency of petrographic thin section image classification and reduce the subjectivity resulting from manual classification methods, a new classification model (DC-PC-Dilated-IR-V2) in term of the deep convolutional network is constructed in this study. In the DC-PC-Dilated-IR-V2 model, the depthwise separable convolution (DSC) is applied to avoid the increase problem of parameters and calculations due to too many convolutional layers; the attention module is introduced to obtain a better representation of characteristics through information fusion and weighting, which allows the model to focus on the target area of thin section images; in addition, the dilated convolution is taken in, which enables the model to extract more global characteristics and higher-level semantic characteristics without increasing the convolution parameters, thereby improving the classification precision of the model. The model was evaluated using a dataset comprising 4000 thin section images, classified into categories such as small pores with fine throats, medium pores, feldspar dissolution pores, dissolution-enlarged pores, and microfractures. Our extensive experiments demonstrate the superior performance of DC-PC-Dilated-IR-V2 compared to other classifiers, including back propagation (BP) neural networks, support vector machines (SVM), AlexNet, VGG-16, ResNet-101, ResNeXt-101, and DenseNet. Specifically, DC-PC-Dilated-IR-V2 achieves the highest accuracy (99.84%), Macro_F1 score (0.9787), and Kappa coefficient (0.9763) among all tested methods. Additionally, it significantly reduces the parameter count and computational load with only 15.9 million parameters and 1259 billion FLOPs, ensuring efficiency without sacrificing accuracy. The average training time is also significantly lower than that of its counterparts. These improvements highlight the potential of DC-PC-Dilated-IR-V2 for more efficient and accurate petrographic image classification.https://ieeexplore.ieee.org/document/10879401/Petrographic thin section imageclassificationdepthwise separable convolutionattention moduledilated convolution
spellingShingle Shaowei Pan
Xingxing Cheng
Wenjing Fan
Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution
IEEE Access
Petrographic thin section image
classification
depthwise separable convolution
attention module
dilated convolution
title Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution
title_full Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution
title_fullStr Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution
title_full_unstemmed Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution
title_short Classification of Petrographic Thin Section Images With Depthwise Separable Convolution and Dilated Convolution
title_sort classification of petrographic thin section images with depthwise separable convolution and dilated convolution
topic Petrographic thin section image
classification
depthwise separable convolution
attention module
dilated convolution
url https://ieeexplore.ieee.org/document/10879401/
work_keys_str_mv AT shaoweipan classificationofpetrographicthinsectionimageswithdepthwiseseparableconvolutionanddilatedconvolution
AT xingxingcheng classificationofpetrographicthinsectionimageswithdepthwiseseparableconvolutionanddilatedconvolution
AT wenjingfan classificationofpetrographicthinsectionimageswithdepthwiseseparableconvolutionanddilatedconvolution