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

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 f...

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Published in:MEASUREMENT
Main Authors: Li, Ang; Hamzah, Raseeda; Rahim, Siti Khatijah Nor Abdu
Format: Article
Language:English
Published: ELSEVIER SCI LTD 2025
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001423166800001
author Li
Ang; Hamzah
Raseeda; Rahim
Siti Khatijah Nor Abdu
spellingShingle Li
Ang; Hamzah
Raseeda; Rahim
Siti Khatijah Nor Abdu
A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
Engineering; Instruments & Instrumentation
author_facet Li
Ang; Hamzah
Raseeda; Rahim
Siti Khatijah Nor Abdu
author_sort Li
spelling Li, Ang; Hamzah, Raseeda; Rahim, Siti Khatijah Nor Abdu
A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
MEASUREMENT
English
Article
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.
ELSEVIER SCI LTD
0263-2241
1873-412X
2025
248

10.1016/j.measurement.2025.116871
Engineering; Instruments & Instrumentation

WOS:001423166800001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001423166800001
title A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
title_short A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
title_full A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
title_fullStr A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
title_full_unstemmed A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
title_sort A chip X-ray image bubble defect detection model combined with Dual-Former attention mechanism
container_title MEASUREMENT
language English
format Article
description 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.
publisher ELSEVIER SCI LTD
issn 0263-2241
1873-412X
publishDate 2025
container_volume 248
container_issue
doi_str_mv 10.1016/j.measurement.2025.116871
topic Engineering; Instruments & Instrumentation
topic_facet Engineering; Instruments & Instrumentation
accesstype
id WOS:001423166800001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001423166800001
record_format wos
collection Web of Science (WoS)
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