Classification of Covid and Non-Covid Lungs CT-Scan using Deep Learning with MATLAB| MATLABsolutions
Early classification of 2019 novel coronavirus disease (COVID-19) and Non-Covid is essential for disease cure and control. Compared with reverse-transcription polymerase chain reaction (RT-PCR), chest computed tomography (CT) imaging may be a significantly more trustworthy, useful, and rapid technique to classify and evaluate COVID-19, specifically in the epidemic region. Almost all hospitals have CT imaging machines; therefore, the chest CT images can be utilized for early classification of COVID-19 patients. However, the chest CT-based COVID-19 classification involves a radiology expert and considerable time, which is valuable when COVID-19 infection is growing at rapid rate. Therefore, an automated analysis of chest CT images is desirable to save the medical professionals’ precious time. In this paper, a convolutional neural networks (CNN) is used to classify the COVID-19-infected patients as infected (+ve) or not (−ve). Additionally, the initial parameters of CNN are tuned using multi-objective differential evolution (MODE). Extensive experiments are performed by considering the proposed and the competitive machine learning techniques on the chest CT images. Extensive analysis shows that the proposed model can classify the chest CT images at a good accuracy rate.
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Noise removal from Noisy Audio signal using filters in MATLAB| MATLAB SOLUTIONS
Audio noise reduction system is the system that is
used to remove the noise from the audio signals.
Audio noise reduction systems can be divided into
two basic approaches. The first approach is the
complementary type which involves compressing the
audio signal in some well-defined manner before it is
recorded (primarily on tape). The second approach is
the single-ended or non-complementary type which
utilizes techniques to reduce the noise level already
present in the source material. For more information visit www.matlabsolutions.com
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Corona virus gene sequence analysis using MATLAB | MATLABSolutions
SARS-CoV-2 (Severe acute respiratory syndrome coronavirus 2) Sequences
A novel coronavirus was subsequently identified as the causative pathogen, provisionally named 2019 novel coronavirus (2019-nCoV). As of Jan 26, 2020, more than 2000 cases of 2019-nCoV infection have been confirmed, most of which involved people living in or visiting Wuhan, and human-to-human transmission has been confirmed.
https://www.matlabsolutions.com/matlab-projects/corona-virus-gene-sequence-analysis-in-matlab.php
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