Data Recognition for Multi-Source Heterogeneous Experimental Detection in Cloud Edge Collaboratives

IF 0.8 Q4 Computer Science
Yang Yubo, Meng Jing, Duan Xiaomeng, Bai Jingfen, Jin Yang
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引用次数: 0

Abstract

This article proposes a multisource heterogeneous experimental data recognition method based on CRNN and DBNet in a cloud-edge collaborative environment in an attempt to address the issues of low efficiency and a high error rate that come with traditional manual data detection and recognition. Firstly, a recognition architecture for experimental detection data of intelligent measurement systems is designed based on a cloud-edge collaborative environment to improve the efficiency of data processing. Then, the improved DBNet network is used in the edge computing center to detect the text, and the correction module is used to correct the deviation of the detected text to ensure the standardization of the text. Finally, in the central cloud, the end-to-end indefinite length character recognition (CRNN) algorithm is used to analyze and identify the text order, rules, and other information of the image after the correction is completed, extract the test detection data, and convert the detection data into row data according to the two-dimensional table structure, and conduct structured storage and management through the relational database. An experimental analysis of the proposed method is conducted based on the deep learning framework, and results show that its accuracy rate and recall rate are close to 96% and 94%, respectively, with an average accuracy of 95.09%. This fully demonstrates the proposed method is effective and, therefore, applicable to power equipment experimental detection data recognition.
云边缘协作中多源异构实验检测的数据识别
本文提出了一种基于CRNN和DBNet的云边缘协同环境下的多源异构实验数据识别方法,试图解决传统人工数据检测识别效率低、错误率高的问题。首先,设计了基于云边缘协同环境的智能测量系统实验检测数据识别体系结构,提高数据处理效率;然后,在边缘计算中心使用改进的DBNet网络对文本进行检测,并使用纠错模块对检测到的文本进行纠错,保证文本的规范性。最后,在中心云中,采用端到端不确定长度字符识别(CRNN)算法,对校正完成后的图像文本顺序、规则等信息进行分析识别,提取测试检测数据,并根据二维表结构将检测数据转换为行数据,通过关系数据库进行结构化存储和管理。基于深度学习框架对所提出的方法进行了实验分析,结果表明其准确率和召回率分别接近96%和94%,平均准确率为95.09%。充分证明了该方法的有效性,适用于电力设备实验检测数据的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
12.50%
发文量
29
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