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基于改进频域通道注意力机制的卷烟条盒商标纸真伪鉴别方法OA

Authenticity identification for cigarette carton blanks based on improved frequency channel attention mechanism

中文摘要英文摘要

为提升真假卷烟鉴别的效率与准确性,提出一种基于改进频域通道注意力网络(IFcaNet)的卷烟条盒商标纸真伪鉴别方法.该方法首先将卷烟条盒的图像切分成3个子图,应用频域通道注意力网络(FcaNet)对每个子图进行深入的特征提取,通过自注意力模块,实现子图特征之间的有效交互,增强特征的表达能力.然后,通过最大池化和平均池化操作,分别获取条盒图像的显著特征和平均特征,两者的结合为模型提供更全面的图像信息.最后,将最大池化和平均池化得到的向量拼接,输入到全连接层进行二元分类.结果表明,IFcaNet在分类准确性和模型泛化能力方面均优于现有的对照模型,展示出其在真假卷烟鉴别领域的应用潜力.

In order to improve the efficiency and accuracy of authenticity identification,an advanced method based on the improved frequency channel attention network(IFcaNet)for cigarette carton blanks was proposed.The method segments the image of cigarette cartons into three sub-images,and depth feature extraction of each sub-image was conducted by FcaNet.Through the self-attention module,effective interaction between the sub-image features was achieved,enhancing the expression ability of the carton features.Through max pooling and average pooling,the salient features and average features of the carton images were obtained,and the integration of the two types of data provided the model with more comprehensive image information.Finally,the concatenated vectors obtained from the max pooling and average pooling were inputted into a fully connected layer for binary classification.Experimental results showed that IFcaNet outperformed existing control models in terms of classification accuracy and model generalization ability,demonstrating its potential for authenticity identification of cigarettes.

李晓辉;朱皓然;禹舰;陈浩;徐羽鹏;瑛琪;姚兰

国家烟草质量监督检验中心,郑州高新技术产业开发区翠竹街6号 450001国家烟草质量监督检验中心,郑州高新技术产业开发区翠竹街6号 450001国家烟草质量监督检验中心,郑州高新技术产业开发区翠竹街6号 450001广西中烟工业有限责任公司,南宁西乡塘区北湖南路28号 530001广西中烟工业有限责任公司,南宁西乡塘区北湖南路28号 530001湖南大学数学学院,长沙岳麓区麓山南路2号 410082湖南大学数学学院,长沙岳麓区麓山南路2号 410082

轻工纺织

卷烟条盒真伪鉴别通道注意力机制离散余弦变换深度学习计算机视觉

Cigarette cartonAuthenticity identificationChannel attention mechanismDiscrete cosine transformDeep learningComputer vision

《烟草科技》 2026 (2)

83-92,10

广西中烟工业有限责任公司科技计划项目"基于机器学习的卷烟产品质量多维智能辨识技术研究"(GXZYCX2021E016).

10.16135/j.issn1002-0861.2025.0736

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