深度学习的图像数据增强技术-镜像回顾

Dipen Saini, R. Malik
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引用次数: 3

摘要

使计算机理解图像是计算机视觉的任务。然而,要熟悉它并学会分析计算机能够感知到的东西是一项乏味的任务。为了应对这一挑战,可以使用深度学习框架来执行卷积神经网络,从而实现我们的目标。为了增强这项任务,并使计算机更准确地学习真实世界图像中的变化,增强是实现这一目标的一种极好的方式。本文讨论了不同类型的常规增强、利用深度学习方法进行增强以及该技术的其他重要工作。本文试图涵盖增强的关键特征,这不仅可以帮助新的研究人员,也可以帮助其他有经验的研究人员解释这项技术的最新趋势,这将使我们能够共同努力,通过利用各种深度学习模型,使计算机更加细致地学习,使它们更加高效和健壮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Data Augmentation techniques for Deep Learning -A Mirror Review
Making a computer understand the images is the task of computer vision. However, to familiarize it and learn to analyze what the computer is able to perceive is a tedious task. To address this challenge, Convolutional Neural Networks using deep learning frameworks could be performed and our goal could be achieved. For enhancing this task and making a computer learn more accurately and precisely about the variations in the real-world images, augmentation is an excellent way for making it possible. In this paper different types of normal augmentations, using deep learning methods for augmentation and other important works on this technique are discussed. This paper tries to cover the critical features of the augmentation, which will thus not only aid the new researchers but also other experienced researchers to interpret the latest trends going on in this technology, this would enable us to work together to make the computers learn more meticulously by utilizing various deep learning models that are trained on the images, making them more efficient and robust.
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