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The analysis of intelligent real-time image recognition technology based on mobile edge computing and deep learning

机译:基于移动边缘计算和深度学习的智能实时图像识别技术分析

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This article aims to improve the accuracy of real-time image recognition in the context of the Internet of Things (IoT), reduce the core network pressure of the IoT and the proportion of IoT broadband, and meet people's demand for internet image transmission. An intelligent image fusion system based on mobile edge computing (MEC) and deep learning is proposed, which can extract the features of images and optimize the sum of intra-class distance and inter-class distance relying on the hierarchical mode of deep learning, and realize distributed computing with the edge server and base station. Through comparison with other algorithms and strategies on the text and character data sets, the effectiveness of the constructed system is verified in the performance of the algorithm and the IoT. The results reveal that the application of the unsupervised learning hierarchical discriminant analysis (HDA) has better accuracy and recall in various databases compared with conventional image recognition algorithms. When the sum intra-class and inter-class distance K is 2, the accuracy of the algorithm can be as high as 98%. The combination of MEC and layered algorithms effectively reduces the pressures of core network and shortens the response time, greatly reduces the broadband occupancy ratio. The performance of IoT is increased by 37.03% compared with the general extraction and common cloud computing. Image recognition based on the MEC architecture can reduce the amount of network transmission and reduce the response time under the premise of ensuring the recognition rate, which can provide a theoretical basis for the research and application of user image recognition under the IoT.
机译:本文旨在提高事物互联网上的实时图像识别的准确性(物联网),降低物联网的核心网络压力和物联网宽带的比例,并满足人们对互联网图像传输的需求。提出了一种基于移动边缘计算(MEC)和深度学习的智能图像融合系统,可以提取图像的特征,并优化依赖于深度学习的层次模式的类内距离和类间距离的总和,以及用边缘服务器和基站实现分布式计算。通过与文本和字符数据集的其他算法和策略进行比较,在算法和物联网的性能下验证了构建系统的有效性。结果表明,与传统的图像识别算法相比,无监督学习分层判别分析(HDA)在各种数据库中具有更好的准确性和召回。当总和的类别和类间距离K为2时,算法的准确性可以高达98%。 MEC和分层算法的组合有效地降低了核心网络的压力并缩短了响应时间,大大降低了宽带占用率。与一般提取和普通云计算相比,物联网的性能增加了37.03%。基于MEC架构的图像识别可以减少网络传输量并减少确保识别率的前提下的响应时间,这可以为用户图像识别下的研究和应用提供理论依据。

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