幽闭恐惧症医疗图像检索中深度学习算法的决策

A. Lavanya, Dr. B.Sheela
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引用次数: 0

摘要

医学影像的内容,已成为当今社会的一大话题。为了有效地识别图像,开发人员已经出现了几种策略,并正在定期改进。在技术革命中,图像检索成为计算机社会的一个主要问题。本文主要研究幽闭恐惧症影像。幽闭恐惧症是对封闭空间的恐惧。将这些图像合并使用CNN技术和哈希技术,成为程序员的关注,以提高计算图像之间相似度的效率。事实上,卷积神经网络(CNN)和深度学习在过去几年一直被认为是图像分析的基础(CNN)。图像检索研究是本研究的主题,它提供了最新的发展概况。这一领域已经出现了大量的新方法,为患者提供了良好的协调护理,并提高了患者的预后。然而,基于神经网络的哈希编码是最常用的方法,它可以分为三个主要类别:监督,无监督和半监督。它已被评估并与最相关的文献进行比较,以突出各种策略的优势和劣势。最后,幽闭恐惧症的预测将被纳入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Making on Deep Learning Algorithm in Claustrophobic Health Care Image Retrieval
Content of medical Images, which has become a major topic in today's society. Several strategies have emerged and are being improved on a regular basis by developers in order to efficiently recognise images. During the revolution in technology, image retrieval becomes a major issue for computer society. This paper focused on the Claustrophobia images. Claustrophobia is the fear of enclosed spaces. These images will be incorporated using CNN technique and hashing techniques ,became the attention of programmers in order to improve the efficacy of calculating similarities between images. In fact, convolutional neural networks (CNNs) and deep learning have been regarded the foundation of image analysis over the past few years (CNN). Image retrieval research is the subject of this study, which provides an overview of the most recent developments. This field has seen a slew of new approaches emerge that provides well-coordinated care of the patient and enhance patient outcomes. However, neural network-based hash encoding is the most often used approach, and it may be divided into three primary categories: supervised, unsupervised, and semisupervised. It has been evaluated and compared to the most relevant literature to highlight the strengths and weaknesses of various strategies. Finally, the prediction of Claustrophobia will be incorporated.
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