Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals

Image processing is one of the most rapidly evolving technologies today, and it is an approach for applying operations on an image to improve it or extract relevant information from it. This is a critical research field in the engineering and computer sciences. However, analyzing a large number of v...

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Main Authors: Mwamba Kasongo Dahouda, Inwhee Joe
Format: Article
Language:English
Published: IEEE 2022-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9810927/
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author Mwamba Kasongo Dahouda
Inwhee Joe
author_facet Mwamba Kasongo Dahouda
Inwhee Joe
author_sort Mwamba Kasongo Dahouda
collection DOAJ
description Image processing is one of the most rapidly evolving technologies today, and it is an approach for applying operations on an image to improve it or extract relevant information from it. This is a critical research field in the engineering and computer sciences. However, analyzing a large number of variables demands a lot of memory and processing resources, which can cause a classification algorithm to overfit the training samples and underfit the test samples. As a result, various strategies, such as extraction, can be used to reduce the number of features in a dataset by producing new features from old ones. In this paper, we first propose a deep learning-based feature extraction approach with a modular neural network, where we employ a pre-trained neural architecture search net (NASNet) as a feature extractor on a custom dataset of raw copper and cobalt images. It allows the input image to be feed-forwarded while performing feature learning and feature map and then stops at a pooling layer before the fully connected (FC) layer in the NASNet to extract and save the outputs of that layer in dumped files. Second, the extracted features are used as training data to build a deep neural network and machine learning algorithms for the image classification of copper and cobalt raw minerals. The experimental results show that the NASNet extracts the features efficiently, and the proposed modular neural network performs well with the boosting-decision tree as a classifier, which gives higher accuracy of 91% than 90% of the deep neural network; moreover, the precision is 1 higher than 0.98 for the deep neural network.
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spelling doaj.art-e3aea2a07f8848759446013804735b162022-12-22T03:03:49ZengIEEEIEEE Access2169-35362022-01-0110722537226210.1109/ACCESS.2022.31874209810927Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw MineralsMwamba Kasongo Dahouda0https://orcid.org/0000-0003-0376-683XInwhee Joe1https://orcid.org/0000-0002-8435-0395Department of Computer Science, Hanyang University, Seoul, South KoreaDepartment of Computer Science, Hanyang University, Seoul, South KoreaImage processing is one of the most rapidly evolving technologies today, and it is an approach for applying operations on an image to improve it or extract relevant information from it. This is a critical research field in the engineering and computer sciences. However, analyzing a large number of variables demands a lot of memory and processing resources, which can cause a classification algorithm to overfit the training samples and underfit the test samples. As a result, various strategies, such as extraction, can be used to reduce the number of features in a dataset by producing new features from old ones. In this paper, we first propose a deep learning-based feature extraction approach with a modular neural network, where we employ a pre-trained neural architecture search net (NASNet) as a feature extractor on a custom dataset of raw copper and cobalt images. It allows the input image to be feed-forwarded while performing feature learning and feature map and then stops at a pooling layer before the fully connected (FC) layer in the NASNet to extract and save the outputs of that layer in dumped files. Second, the extracted features are used as training data to build a deep neural network and machine learning algorithms for the image classification of copper and cobalt raw minerals. The experimental results show that the NASNet extracts the features efficiently, and the proposed modular neural network performs well with the boosting-decision tree as a classifier, which gives higher accuracy of 91% than 90% of the deep neural network; moreover, the precision is 1 higher than 0.98 for the deep neural network.https://ieeexplore.ieee.org/document/9810927/Image preprocessingfeature extractiondeep learningmachine learning
spellingShingle Mwamba Kasongo Dahouda
Inwhee Joe
Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals
IEEE Access
Image preprocessing
feature extraction
deep learning
machine learning
title Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals
title_full Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals
title_fullStr Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals
title_full_unstemmed Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals
title_short Neural Architecture Search Net-Based Feature Extraction With Modular Neural Network for Image Classification of Copper/ Cobalt Raw Minerals
title_sort neural architecture search net based feature extraction with modular neural network for image classification of copper cobalt raw minerals
topic Image preprocessing
feature extraction
deep learning
machine learning
url https://ieeexplore.ieee.org/document/9810927/
work_keys_str_mv AT mwambakasongodahouda neuralarchitecturesearchnetbasedfeatureextractionwithmodularneuralnetworkforimageclassificationofcoppercobaltrawminerals
AT inwheejoe neuralarchitecturesearchnetbasedfeatureextractionwithmodularneuralnetworkforimageclassificationofcoppercobaltrawminerals