2021
DOI: 10.47059/revistageintec.v11i2.1820
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An Identification and Classification of Thyroid Diseases Using Deep Learning Methodology

Abstract: The thyroid is one of the most important parts of our body. As part of the endocrine system, this tiny gland in our neck releases thyroid hormone, which is responsible for directing all your metabolic functions which means controlling everything from digestion to conversion to energy. When thyroid dysfunction, it can affect all aspects of our health. Both researchers and doctors face challenges in fighting thyroid disease. In that thyroid disease is a major cause of the emergence of medical diagnostics and pro… Show more

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Cited by 2 publications
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“…Several template-based methods [10][11][12] stand out as the most common automatic recognition methods nowadays. On the other hand, a different class of methods represented pedestrians' structural and kinetic properties using coarse human-model techniques [13][14][15]. Over a hundred people and various critical aspects, including view variants and appearance-changing, were considered in the early stages of dataset building the encouraging consequences of the test, it appears that gait recognition is doable and could be useful in the future [16].…”
Section: Introductionmentioning
confidence: 99%
“…Several template-based methods [10][11][12] stand out as the most common automatic recognition methods nowadays. On the other hand, a different class of methods represented pedestrians' structural and kinetic properties using coarse human-model techniques [13][14][15]. Over a hundred people and various critical aspects, including view variants and appearance-changing, were considered in the early stages of dataset building the encouraging consequences of the test, it appears that gait recognition is doable and could be useful in the future [16].…”
Section: Introductionmentioning
confidence: 99%