R. R, R. N, SWATHIKA R, Poongavanam N,, Mishmala Sushith
{"title":"Time Series Analysis of Clinical Dataset Using ImageNet Classifier","authors":"R. R, R. N, SWATHIKA R, Poongavanam N,, Mishmala Sushith","doi":"10.56294/saludcyt2024837","DOIUrl":null,"url":null,"abstract":"Deep learning is a bunch of calculations in AI that endeavor to learn in numerous levels, comparing to various degrees of deliberation. It regularly utilizes counterfeit brain organizations. The levels in these learned factual models compare to unmistakable degrees of ideas, where more significant level ideas are characterized from lower-level ones, and a similar lower level ideas can assist with characterizing numerous more elevated level ideas. As of late, an AI (ML) region called profound learning arose in the PC vision field and turned out to be exceptionally famous in many fields. It began from an occasion in late 2018, when a profound learning approach in light of a convolutional brain organization (CNN) won a mind-boggling triumph in the most popular overall com management rivalry, ImageNet Characterization. From that point forward, scientists in many fields, including clinical picture examination, have begun effectively partaking in the dangerously developing field of profound learning. In this section, profound learning procedures and their applications to clinical picture examination are studied. This study outlined 1) standard ML procedures in the PC vision field, 2) what has changed in ML when the presentation of profound learning, 3) ML models in profound learning, and 4) uses of profound figuring out how to clinical picture examination. Indeed, even before the term existed, profound learning, in particular picture input ML, was applied to an assortment of clinical picture examination issues, including harm and non-harm characterization, harm type grouping, harm or organ division, and sore location.","PeriodicalId":506303,"journal":{"name":"Salud, Ciencia y Tecnología","volume":"69 6","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Salud, Ciencia y Tecnología","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.56294/saludcyt2024837","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Deep learning is a bunch of calculations in AI that endeavor to learn in numerous levels, comparing to various degrees of deliberation. It regularly utilizes counterfeit brain organizations. The levels in these learned factual models compare to unmistakable degrees of ideas, where more significant level ideas are characterized from lower-level ones, and a similar lower level ideas can assist with characterizing numerous more elevated level ideas. As of late, an AI (ML) region called profound learning arose in the PC vision field and turned out to be exceptionally famous in many fields. It began from an occasion in late 2018, when a profound learning approach in light of a convolutional brain organization (CNN) won a mind-boggling triumph in the most popular overall com management rivalry, ImageNet Characterization. From that point forward, scientists in many fields, including clinical picture examination, have begun effectively partaking in the dangerously developing field of profound learning. In this section, profound learning procedures and their applications to clinical picture examination are studied. This study outlined 1) standard ML procedures in the PC vision field, 2) what has changed in ML when the presentation of profound learning, 3) ML models in profound learning, and 4) uses of profound figuring out how to clinical picture examination. Indeed, even before the term existed, profound learning, in particular picture input ML, was applied to an assortment of clinical picture examination issues, including harm and non-harm characterization, harm type grouping, harm or organ division, and sore location.
深度学习是人工智能领域的一种计算方法,它努力从多个层面进行学习,与不同程度的深思熟虑进行比较。它经常利用仿真大脑组织。在这些学习到的事实模型中,各层次可与明确无误的思想程度进行比较,其中更重要的思想是从较低层次的思想中表征出来的,而类似的较低层次思想可以帮助表征众多更高层次的思想。最近,一个名为深度学习的人工智能(ML)领域在PC视觉领域兴起,并在许多领域变得异常著名。这要从2018年末的一次事件说起,当时,一种以卷积大脑组织(CNN)为基础的深度学习方法在最受欢迎的整体com管理竞赛--ImageNet Characterization--中获得了令人匪夷所思的胜利。从那时起,包括临床图片检查在内的许多领域的科学家都开始有效地参与到深度学习这一危险的发展领域中来。本节将研究深度学习程序及其在临床图片检查中的应用。本研究概述了 1) PC 视觉领域的标准 ML 程序,2) 深度学习出现后 ML 的变化,3) 深度学习中的 ML 模型,以及 4) 深度学习如何应用于临床图片检查。事实上,在深度学习这一术语出现之前,深度学习,尤其是图片输入法,已被应用于各种临床图片检查问题,包括伤害和非伤害特征描述、伤害类型分组、伤害或器官划分以及溃疡位置。