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基于双维自注意力的跨阶段融合燃料棒外观缺陷检测方法

张小刚 俞东宝 汤慧 朱永利 曹微

原子能科学技术2025,Vol.59Issue(11):2525-2533,9.
原子能科学技术2025,Vol.59Issue(11):2525-2533,9.DOI:10.7538/yzk.2024.youxian.0926

基于双维自注意力的跨阶段融合燃料棒外观缺陷检测方法

Cross Stage Fusion Fuel Rod Appearance Defect Detection Method Based on Dual Dimensional Self Attention

张小刚 1俞东宝 1汤慧 1朱永利 1曹微1

作者信息

  • 1. 中核北方核燃料元件有限公司,内蒙古 包头 014035
  • 折叠

摘要

Abstract

Pressurized water reactor nuclear fuel rods are a type of fuel element commonly used in nuclear power plants.The production quality of fuel rods is related to the safe operation of nuclear power plants.It is very important to inspect the appearance quality of fuel rods.In view of the complex background and difficult feature extraction of fuel rod appearance defects in the produce scene,this paper proposed a novel cross stage fusion model based on dual dimensional self attention(DSCFM).The model used Extended-ELAN as the backbone network to extract features and designed a novel multi-scale feature fusion structure(MFFS)as the neck structure of the model to efficiently process and fuse feature information at different levels.The purpose of the MFFS design is to optimize the information flow between features at different levels.A large amount of detailed information was retained through a detailed fusion mechanism,while strengthening the model's ability to understand the complexity of the scene.In addition,to further mine and utilize the underlying structural information and effectively integrate deep information,a self attention feature fusion module with dual dimensional characteristics(DSAF)was proposed.DSAF expanded the deep and underlying features into dual dimensional feature maps,and used its own transposed matrix to generate channel and spatial attention maps,thereby accurately enhancing the expression of key information,while suppressing irrelevant noise and optimizing the feature fusion process.Through this dual dimensional self attention mechanism,DSAF dynamically adjusts feature responses,effectively captures long-term dependencies,and enhances the model's adaptability and interpretation capabilities for complex scenes.Finally,combined with a multi-scale deconvolution structure,the DSCFM achieves effective upsampling and optimization of features,significantly improving the model's ability to capture information at different scales and its robustness in various visual tasks.The results are verified on a fuel rod appearance defect dataset,and the experiments show that compared with other detection models,the DSCFM can quickly and accurately identify defects,with an mAP of 82.0%and a recall rate of 77.9%.

关键词

燃料棒/缺陷检测/多尺度/双维度/自注意力

Key words

fuel rod/defect detection/multi-scale/dual dimensional/self attention

分类

核科学

引用本文复制引用

张小刚,俞东宝,汤慧,朱永利,曹微..基于双维自注意力的跨阶段融合燃料棒外观缺陷检测方法[J].原子能科学技术,2025,59(11):2525-2533,9.

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