基于深度体积学习算法的计算机大数据模型研究

Yusong Du, Qi Li, Jiashuai Yin, Yuqing Du
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摘要

随着信息通信技术的飞速发展,全球数据量呈爆炸式增长。如何对海量复杂的数据进行有效分析,挖掘和实现其潜在价值,合理利用,是当前的重要课题之一。提出了一种基于深度学习的不完全大数据填充算法。首先,在自动编码器的基础上,建立了灌装自动编码器。在此基础上,构建深度填充网络模型,分析不完全大数据的深度特征,并根据逐层训练思想和反向传播算法计算网络参数,基于深度学习的目标检测算法在检测精度上远远领先于传统目标检测算法。依靠大数据自动学习和提取特征,效果远远好于人工设计特征。虽然大数据给工业、教育、医疗等诸多领域带来了巨大的潜力,但从大数据中获取有价值的知识是一项非常艰巨的任务。了解大数据的特点,挖掘大数据中隐藏的信息,既需要先进的技术,也需要跨学科的合作。基于深度学习算法的深度卷积神经网络模型,所提出的计算机视觉领域在识别能力方面取得了显著的成就。本文主要讨论了深度卷积神经网络在计算机视觉中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Computer Big Data Model Based on Deep Volume Learning Algorithm
With the rapid development of information and communication technology, the amount of global data is increasing explosively. How to effectively analyze massive and complex data, mine and realize its potential value and make rational use of it is one of the important topics at present. An incomplete big data filling algorithm based on deep learning is proposed. Firstly, the filling automatic coder is established based on the automatic coder. On this basis, the depth filling network model is constructed, the depth characteristics of incomplete big data are analyzed, and the network parameters are calculated according to the layer by layer training idea and back propagation algorithm The target detection algorithm based on deep learning is far ahead of the traditional target detection algorithm in detection accuracy. Relying on big data to automatically learn and extract features, the effect is far better than that of manually designed features. Although big data has brought great potential to many fields such as industry, education and health care, it is a very arduous task to obtain valuable knowledge from big data. Learning the characteristics of big data and mining the information hidden in big data requires both advanced technology and interdisciplinary cooperation. Based on the deep convolution NN model of deep learning algorithm, the proposed field of computer vision has made remarkable achievements in recognition ability. This paper mainly discusses the application of deep convolution NN in computer vision.
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