Бакалаврські роботи

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    Development of an information site for the Shevchenko Scientific Society
    (Національний університет «Львівська політехніка», 2022) Arafa , Aly; Національний університет «Львівська політехніка»
    Since December 2019, the eradicative coronavirus disease (COVID-19) caused by the stress of the coronavirus 2 (SARS-CoV-2) syndrome has spread widely around the arena and has become an extreme public health problems. For this highly infectious disease, the chest x-ray analysis program plays a major role.In this study, I advocate a class approach for chest x-ray images that relies primarily on the characteristic fusion of a dense convolutional network (DenseNet) and a visual geometry network (VGG16). This paper provides an interest mechanism (global interest device block and class interest block) for the version to extract deep features.Use Residual Network (ResNet) to segment powerful image data to get the correct class quickly. The common accuracy of my version of the binary classifier is 98%. The common accuracy for a three-class class can be around 97.3%. The experimental results show that the proposed version has precise outcomes on the t variable. This work is about. Therefore, the use of deep studying and characteristic fusion era withinside the class of chest X-ray pictures can become an auxiliary tool for clinicians and radiologists.