使用卷积神经网络模型的深度学习回顾

Ari Kurniawan Saputra, E. Erlangga, Tia Tanjung, F. Ariani, Y. Aprilinda, R. Y. Endra
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摘要

机器学习可用于处理大量数据,并从数据中学习模式以预测未来。深度学习是机器学习中应用最广泛的部分之一。目前在图像识别领域取得最显著效果的深度学习方法是卷积神经网络(CNN)。卷积神经网络(CNN)是深度学习算法之一,用于图像或视频分类、检测图像中的物体甚至图像区域等计算机视觉用例。与 CNN 模型相关的一些研究表明,该模型的准确率高达 92%,但由于数据量相当小,且使用了 100 个历元,导致验证误差值高于训练过程中的误差值,因此会出现过拟合现象。基于相关研究文献中存在的几个问题,本文旨在参考研究现状,找出使用 CNN 模型的深度学习算法的弱点和不足,以便为进一步的研究提供参考。近五年来,使用 CNN 模型的深度学习算法的相关研究现状发现:(1)epochs 的数量会影响 CNN 模型的准确性;(2)2.架构的应用会影响 CNN 模型的准确性;(3)层的应用类型会影响 CNN 模型的准确性。基于研究文献中与识别使用 CNN 模型的深度学习的弱点和缺点相关的几个问题,参考表 1.近五年来的文献综述研究现状总结,可以得出结论:要提高 CNN 模型的准确性,必须增加历时次数、根据研究中的问题应用正确的架构以及使用层的类型。本文的假设可作为使用 CNN 模型进行深度学习相关进一步研究的参考。
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Review of Deep Learning Using Convolutional Neural Network Model
Machine Learning can be used to process a lot of data and learn patterns from that data to predict the future. One of the most widely used parts of machine learning is Deep Learning. The Deep Learning method that currently provides the most significant results in image recognition is Convolutional Neural Network (CNN). Convolutional Neural Network (CNN) is one of the deep learning algorithms used for computer vision use cases such as image or video classification and detecting objects within images or even image areas. Some research related to the CNN model states that this model has a very good accuracy of 92% but with a fairly small amount of data and the use of epochs, namely 100, resulting in a higher validation error value than the error value in the training process, so that over fitting will occur. Based on several problems in the related research literature, this article aims to identify the weaknesses and shortcomings of Deep Learning algorithms using CNN models that refer to the state of the art, so that they can be used as a reference for further research. The state of the art related to research in the last five years, the Deep Learning algorithm using the CNN model found that (1) The number of epochs can affect the accuracy of the CNN model, (2) 2. The application of architecture can affect the accuracy of the CNN model, (3) the application of the type of layer can affect the accuracy of the CNN model. Based on several problems in the research literature related to the identification of weaknesses and shortcomings of Deep Learning using the CNN model which refers to Table 1. State of the Art summary of literature review research for the last five years, it can be concluded that to increase the accuracy of the CNN model, it is necessary to increase the number of epochs, apply the right architecture according to the problems in the research conducted, and use the type of layer. The hypothesis of this article can be used as a reference for further research related to Deep Learning using the CNN model.
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