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Main Authors: KS, Nagullas, V, Vivekanand., Darapaneni, Narayana, P, Anwesh R
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.04635
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author KS, Nagullas
V, Vivekanand.
Darapaneni, Narayana
P, Anwesh R
author_facet KS, Nagullas
V, Vivekanand.
Darapaneni, Narayana
P, Anwesh R
contents Introduction: Automated Lung X-Ray Abnormality Detection System is the application which distinguish the normal x-ray images from infected x-ray images and highlight area considered for prediction, with the recent pandemic a need to have a non-conventional method and faster detecting diseases, for which X ray serves the purpose. Obectives: As of current situation any viral disease that is infectious is potential pandemic, so there is need for cheap and early detection system. Methods: This research will help to eases the work of expert to do further analysis. Accuracy of three different preexisting models such as DenseNet, MobileNet and VGG16 were high but models over-fitted primarily due to black and white images. Results: This led to building up new method such as as V-BreathNet which gave more than 96% percent accuracy. Conclusion: Thus, it can be stated that not all state-of art CNN models can be used on B/W images. In conclusion not all state-of-art CNN models can be used on B/W images.
format Preprint
id arxiv_https___arxiv_org_abs_2404_04635
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Deep Look Into -- Automated Lung X-Ray Abnormality Detection System
KS, Nagullas
V, Vivekanand.
Darapaneni, Narayana
P, Anwesh R
Image and Video Processing
Computer Vision and Pattern Recognition
Introduction: Automated Lung X-Ray Abnormality Detection System is the application which distinguish the normal x-ray images from infected x-ray images and highlight area considered for prediction, with the recent pandemic a need to have a non-conventional method and faster detecting diseases, for which X ray serves the purpose. Obectives: As of current situation any viral disease that is infectious is potential pandemic, so there is need for cheap and early detection system. Methods: This research will help to eases the work of expert to do further analysis. Accuracy of three different preexisting models such as DenseNet, MobileNet and VGG16 were high but models over-fitted primarily due to black and white images. Results: This led to building up new method such as as V-BreathNet which gave more than 96% percent accuracy. Conclusion: Thus, it can be stated that not all state-of art CNN models can be used on B/W images. In conclusion not all state-of-art CNN models can be used on B/W images.
title A Deep Look Into -- Automated Lung X-Ray Abnormality Detection System
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.04635