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基于优化DBNet-CRNN的端子标识检测识别算法研究OA

An optimized DBNet-CRNN based algorithm for terminal detection and recognition

中文摘要英文摘要

为提高变电所巡检工作效率,提出一种基于深度学习的变电所扭曲变形端子标识文本检测与识别方法.端子标识检测模型以DBNet为基本框架,将原有的Res-Net主干网络替换为ConvNeXt V2,利用其现代化架构设计,显著提升模型的全局信息建模能力和对端子标识的特征提取能力.为进一步提升扭曲变形端子标识检测精度,引入高效多尺度注意力模块与可变形卷积网络,有效提升全局上下文信息捕捉能力,增强对不规则文本形状的鲁棒性,优化后端子标识检测模型的F1 分数达97.4%,相较原模型提高 18.9 个百分点,且计算量仅提高2.9%.端子标识识别模型以卷积循环神经网络为基本框架,引入空间与通道卷积优化特征提取过程,显著减少冗余特征的同时降低计算负担.在序列建模部分,采用选择性状态空间网络Mamba替代原有的长短时记忆网络,其状态空间模型与选择性机制能够对序列数据动态建模,自适应关注序列中的重要部分,显著增强了长序列依赖关系的捕捉能力,优化后的端子标识识别模型识别准确率达 98.2%,较原模型提高 2.7 个百分点.实验结果表明,该方法对变电所端子标识中存在的扭曲变形、弱光模糊等负面因素具有优异的检测精度与识别准确率.

To improve substation inspection efficiency,this paper proposes a deep learning-based method for de-tecting and recognizing distorted terminal block labels in substation.The detection model is built upon the DBNet framework,wherein the original ResNet backbone is replaced with ConvNeXt V2.This upgrade uses ConvNeXt V2's modern architectural design to significantly enhance the model's global information modeling and feature extraction capabilities for terminal identification.To further improve the detection accuracy for twisted and deformed terminal labels,we integrate an Efficient Multi-scale Attention(EMA)module and a Deformable Convolutional Network(DCNv4)to effectively strengthen the model's ability to capture global contextual information and enhance its ro-bustness to irregular text shapes.After optimization,the terminal detection model achieves F1 score of 97.4%,which represents an 18.9 percentage-point improvement over the original model,with only a 2.9%increase in calculation amount.For the recognition model,we take the Convolutional Recurrent Neural Network(CRNN)framework and introduce Spatial and Channel Convolution(SCConv)to optimize the feature extraction process,which significantly reduces redundant features and alleviates the computational burden.In the sequence modeling part,the selective state space network Mamba is used to replace the original Long Short-Term Memory(LSTM).Mamba's state space model and selective mechanism enable dynamic sequence data modeling,allowing it to adaptively focus on critical parts of the sequence and significantly enhance the capture of long sequence dependencies.The optimized recogni-tion model achieves an accuracy of 98.2%,which is 2.7 percentage points higher than the original model.Experi-mental results show that the proposed method exhibits excellent detection capability and recognition accuracy for substation terminal identification under challenging conditions such as distortion,weak light and blur.

王景琦;陈煜琦;薛强;赵瑞清;王硕禾

石家庄铁道大学 电气与电子工程学院,石家庄,050043||石家庄铁道大学 河北省交通电力网智能融合技术与装备协同创新中心,石家庄,050043||石家庄铁道大学 河北省分布式能源应用技术创新中心,石家庄,050043石家庄铁道大学 电气与电子工程学院,石家庄,050043||石家庄铁道大学 河北省交通电力网智能融合技术与装备协同创新中心,石家庄,050043||石家庄铁道大学 河北省分布式能源应用技术创新中心,石家庄,050043石家庄铁道大学 电气与电子工程学院,石家庄,050043||石家庄铁道大学 河北省交通电力网智能融合技术与装备协同创新中心,石家庄,050043||石家庄铁道大学 河北省分布式能源应用技术创新中心,石家庄,050043中国铁路北京局集团有限公司 石家庄供电段,石家庄,050041石家庄铁道大学 电气与电子工程学院,石家庄,050043||石家庄铁道大学 河北省交通电力网智能融合技术与装备协同创新中心,石家庄,050043||石家庄铁道大学 河北省分布式能源应用技术创新中心,石家庄,050043

信息技术与安全科学

变电所巡检文本检测文本识别端子标识DBNet卷积循环神经网络

substation inspectiontext detectiontext recognitionterminal identificationDBNetconvolutional re-current neural network(CRNN)

《南京信息工程大学学报》 2026 (2)

221-230,10

国家自然科学基金(12072203)国能朔黄铁路发展有限责任公司科研课题(SHTL-24-32)

10.13878/j.cnki.jnuist.20250221002

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