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Autori principali: Pant, Lalit, Arora, Shubham
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2407.03931
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author Pant, Lalit
Arora, Shubham
author_facet Pant, Lalit
Arora, Shubham
contents Multi-label radiography image classification has long been a topic of interest in neural networks research. In this paper, we intend to classify such images using convolution neural networks with novel localization techniques. We will use the chest x-ray images to detect thoracic diseases for this purpose. For accurate diagnosis, it is crucial to train the network with good quality images. But many chest X-ray images have irrelevant external objects like distractions created by faulty scans, electronic devices scanned next to lung region, scans inadvertently capturing bodily air etc. To address these, we propose a combination of localization and deep learning algorithms called LeDNet to predict thoracic diseases with higher accuracy. We identify and extract the lung region masks from chest x-ray images through localization. These masks are superimposed on the original X-ray images to create the mask overlay images. DenseNet-121 classification models are then used for feature selection to retrieve features of the entire chest X-ray images and the localized mask overlay images. These features are then used to predict disease classification. Our experiments involve comparing classification results obtained with original CheXpert images and mask overlay images. The comparison is demonstrated through accuracy and loss curve analyses.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03931
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle LeDNet: Localization-enabled Deep Neural Network for Multi-Label Radiography Image Classification
Pant, Lalit
Arora, Shubham
Image and Video Processing
Computer Vision and Pattern Recognition
Multi-label radiography image classification has long been a topic of interest in neural networks research. In this paper, we intend to classify such images using convolution neural networks with novel localization techniques. We will use the chest x-ray images to detect thoracic diseases for this purpose. For accurate diagnosis, it is crucial to train the network with good quality images. But many chest X-ray images have irrelevant external objects like distractions created by faulty scans, electronic devices scanned next to lung region, scans inadvertently capturing bodily air etc. To address these, we propose a combination of localization and deep learning algorithms called LeDNet to predict thoracic diseases with higher accuracy. We identify and extract the lung region masks from chest x-ray images through localization. These masks are superimposed on the original X-ray images to create the mask overlay images. DenseNet-121 classification models are then used for feature selection to retrieve features of the entire chest X-ray images and the localized mask overlay images. These features are then used to predict disease classification. Our experiments involve comparing classification results obtained with original CheXpert images and mask overlay images. The comparison is demonstrated through accuracy and loss curve analyses.
title LeDNet: Localization-enabled Deep Neural Network for Multi-Label Radiography Image Classification
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.03931