A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism

被引:0
作者
Li, Ang [1 ,2 ]
Hamzah, Raseeda [3 ]
Rahim, Siti Khatijah Nor Abdu [2 ]
机构
[1] Jiujiang Vocat Univ, Coll Informat Engn, Jiujiang 332000, Jiang Xi, Peoples R China
[2] Univ Teknol MARA UiTM, Coll Comp Informat & Math, Shah Alam 40450, Selangor, Malaysia
[3] Univ Teknol MARA UiTM, Coll Comp Informat & Math, Melaka Branch, Merlimau 77300, Melaka, Malaysia
关键词
X-ray detection; Attention mechanism; YOLO; Chip packaging; Bubble defect;
D O I
10.1016/j.measurement.2025.116871
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Bubble defects in chip packaging can have an impact on the stability and reliability of the chip. Existing defect detection methods exhibit limited performance in identifying small-sized bubble defects and are highly susceptible to low contrast and noise in chip X-ray images, leading to missed and false detections. To address these challenges, we propose YOLO-DFA, a defect detection model based on improved YOLOv8 framework, to improve the defect detection accuracy. First, a Dual-Former attention mechanism is introduced to improve local and global feature integration, addressing missed detections of small bubble defects and weakening meaningless noise information. Second, a C2-CS module replaces the C2f module in YOLOv8, reducing spatial feature redundancy and computational complexity. Third, an improved Neck network incorporates a 3D-CBS module into the PAFPN network, enhancing the recognition of low contrast targets by strengthening multi- scale feature fusion. DySample is used for upsampling to minimize feature detail loss. Experimental results on the CXray dataset demonstrate that the YOLO-DFA model surpasses YOLOv8 in Precision, Recall, mAP, and F1 Score indicators by 3.1%, 3.4%, 3.2%, and 3.2%, respectively, while achieving a detection speed of 145 FPS, meeting real-time detection requirements. On the ADP_MBT dataset, YOLO-DFA demonstrates strong performance in detecting other chip defects and exhibits notable generalization ability.
引用
收藏
页数:10
相关论文
共 39 条
  • [1] Hu Y., He N., Xie L., Chen D., Gao C., Ding H., Improved automatic defect detection from X-ray scans for aluminum conductor composite core wire based on modified Skip-GANomaly, NDT & E Int., 143, (2024)
  • [2] Qian W., Dong S., Chen L., Ren Q., Image enhancement method for low-light pipeline weld X-ray radiographs based on weakly supervised deep learning, NDT & E Int., 143, (2024)
  • [3] Lu X.L., Gao B., Woo W.L., Xiao X., Zhan D., Huang C., Hybrid physics machine learning for ultrasonic field guided 3D generation and reconstruction of rail defects, NDT & E Int., (2024)
  • [4] Duan F., Yin S., Song P., Zhang W., Zhu C., Yokoi H., Automatic welding defect detection of x-ray images by using cascade adaboost with penalty term, IEEE Access, 7, pp. 125929-125938, (2019)
  • [5] Malarvel M., Singh H., An autonomous technique for weld defects detection and classification using multi-class support vector machine in X-radiography image, Optik, 231, (2021)
  • [6] Wu B., Zhou J., Ji X., Yin Y., Shen X., Research on approaches for computer aided detection of casting defects in X-ray images with feature engineering and machine learning, Procedia Manuf., 37, pp. 394-401, (2019)
  • [7] Huang R., Zhan D., Yang X., Zhou B., Tang L., Cai N., Wang H., Qiu B., ATNet: A defect detection framework for X-ray images of DIP chip lead bonding, Micromachines, 14, 7, (2023)
  • [8] Kong D., Hu X., Gong Z., Zhang D., Segmentation of void defects in X-ray images of chip solder joints based on PCB-DeepLabV3 algorithm, Sci. Rep., 14, 1, (2024)
  • [9] Li K., Xu L., Su L., Gu J., Ji Y., Wang G., Ming X., X-ray detection of ceramic packaging chip solder defects based on improved YOLOv5, NDT & E Int., 143, (2024)
  • [10] Wang J., Lin B., Li G., Zhou Y., Zhong L., Li X., Zhang X., YOLO-xray: A bubble defect detection algorithm for chip X-ray images based on improved YOLOv5, Electronics, 12, 14, (2023)