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MEDICAL IMAGE ENHANCEMENT THROUGH DEEP LEARNING METHODS

机译:通过深度学习方法增强医学图像

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摘要

In recent years, machine learning algorithms are commonly used in the field of digital image processing for interpreting images based on domain specific knowledge in terms of different aspects like image classification, object/pattern recognition, clinical image diagnosing, traffic control systems, satellite imaging, geomorphological and agriculture sectors etc. to analyse ROI from large amount of captured electronic images via different modalities. Machine Learning (ML) is an outlet of Artificial Intelligence (AI). It has ability to learn by itself without any extra effort like explicit programming. In this paper, we will deliberate the emerged expanse of ML - Deep Learning (DL) which is basically a group of concepts with high level of data abstraction. Its application areas are especially analytical study of medical images such as anatomical structure detection, image registration and enhancement, computer aided disease diagnosis, tissue segmentation, and so on. DL based architecture provides exhilarating results with moral accuracy and enhanced performance for medical image segmentation and classification.
机译:近年来,机器学习算法通常在数字图像处理领域用于基于领域特定知识解释图像的不同方面,例如图像分类,对象/模式识别,临床图像诊断,交通控制系统,卫星成像,地貌学和农业部门等,通过不同的方式从大量捕获的电子图像中分析投资回报率。机器学习(ML)是人工智能(AI)的出口。它具有自行学习的能力,而无需像显式编程这样的额外工作。在本文中,我们将仔细研究ML-深度学习(DL)的新兴领域,它基本上是一组具有高水平数据抽象的概念。它的应用领域尤其是医学图像的分析研究,例如解剖结构检测,图像配准和增强,计算机辅助疾病诊断,组织分割等。基于DL的体系结构为医学图像分割和分类提供了令人振奋的结果,包括道德准确性和增强的性能。

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