Label Design and Extraction in High-Temperature Logistics Based on Concave Coding and MLFFA-DeepLabV3+ Network

IF 0.7 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Xiaoyan Zhao, Pengfei Zhao, Yuguo Yin, Luqi Tao, Jianfeng Yan, Zhaohui Zhang
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引用次数: 0

Abstract

Logistics tracking technology at normal temperature is quite mature, but there are few tracking methods for the high-temperature production process. The main difficulties are that the label materials generally used cannot withstand the high temperature for a long time, and the detection devices are vulnerable to environmental impact. A high-temperature logistics tracking solution was developed for a carbon anode used in an aluminum electrolysis factory. It is based on concave coding and a multiscale low-level feature fusion and attention-DeepLabV3+ (MLFFA-DeepLabV3+) network extraction technique for the coded region of the concave coding. The concave coding is printed on the product as a tag that can endure a high temperature of more than 1,200°C, ensuring its integrity and identifiability. Because there is no obvious color distinction between the coding area and the background, direct recognition is ineffective. The MLFFA-DeepLabV3+ network extracts the coding region to improve the recognition rate. The DeepLabV3+ network is improved by replacing the backbone network and adding of a multiscale low-level feature fusion module and convolutional block attention module. Experimental results showed that the mean pixel accuracy and mean intersection over union of the MLFFA-DeepLabV3+ network increased by 2.37% and 2.45%, respectively, compared with the original DeepLabV3+ network. The network structure has only 11.24% of the number of parameters in the original structure. The solution is feasible and provides a basis for high-temperature logistics tracking technology in intelligent manufacturing.
基于凹编码和mlfa - deeplabv3 +网络的高温物流标签设计与提取
常温下的物流跟踪技术已经相当成熟,但针对高温生产过程的跟踪方法却很少。主要困难是一般使用的标签材料不能长时间承受高温,检测装置易受环境影响。针对某铝电解厂碳阳极,开发了一种高温物流跟踪解决方案。该算法基于凹编码和凹编码编码区域的多尺度低阶特征融合与关注- deeplabv3 + (MLFFA-DeepLabV3+)网络提取技术。凹面编码作为标签印刷在产品上,可以承受1200℃以上的高温,保证了产品的完整性和可识别性。由于编码区与背景之间没有明显的颜色区分,直接识别是无效的。mlfa - deeplabv3 +网络提取编码区域,提高识别率。DeepLabV3+网络通过替换骨干网,增加多尺度低阶特征融合模块和卷积块关注模块进行改进。实验结果表明,与原DeepLabV3+网络相比,mlfa -DeepLabV3+网络的平均像素精度和平均交联度分别提高了2.37%和2.45%。网络结构的参数数量仅为原结构的11.24%。该方案切实可行,为智能制造中的高温物流跟踪技术提供了基础。
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来源期刊
CiteScore
1.50
自引率
14.30%
发文量
89
期刊介绍: JACIII focuses on advanced computational intelligence and intelligent informatics. The topics include, but are not limited to; Fuzzy logic, Fuzzy control, Neural Networks, GA and Evolutionary Computation, Hybrid Systems, Adaptation and Learning Systems, Distributed Intelligent Systems, Network systems, Multi-media, Human interface, Biologically inspired evolutionary systems, Artificial life, Chaos, Complex systems, Fractals, Robotics, Medical applications, Pattern recognition, Virtual reality, Wavelet analysis, Scientific applications, Industrial applications, and Artistic applications.
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