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Volume: 0 | Article ID: 040505
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Solder Ball Defect Detection in BGA-Packaged Chips
  DOI :  10.2352/J.ImagingSci.Technol.2024.68.4.040505
Abstract
Abstract

In response to the current challenges in the detection of solder ball defects in ball grid array (BGA) packaged chips, which include slow detection speed, low efficiency, and poor accuracy, our research has addressed these issues. We have designed an algorithm for detecting solder ball defects in BGA-packaged chips by leveraging the specific characteristics of these defects and harnessing the advantages of deep learning. Building upon the YOLOv8 network model, we have made adaptive improvements to enhance the algorithm. First, we have introduced an adaptive weighted downsampling method to boost detection accuracy and make the model more lightweight. Second, to improve the extraction of image features, we have proposed an efficient multi-scale convolution method. Finally, to enhance convergence speed and regression accuracy, we have replaced the traditional Complete Intersection over Union loss function with Minimum Points Distance Intersection over Union (MPDIoU). Through a series of controlled experiments, our enhanced model has shown significant improvements when compared to the original network. Specifically, we have achieved a 1.7% increase in mean average precision, a 1.5% boost in precision, a 0.9% increase in recall, a reduction of 4.3 M parameters, and a decrease of 0.4 G floating-point operations per second. In comparative experiments, our algorithm has demonstrated superior overall performance when compared to other networks, thereby effectively achieving the goal of solder ball defect detection.

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  Cite this article 

Qing Zhao, Honglei Wei, Shiji Zhang, Meng Huang, Xiaoyu Wang, Yan Lv, "Solder Ball Defect Detection in BGA-Packaged Chipsin Journal of Imaging Science and Technology,  2024,  pp 1 - 12,  https://doi.org/10.2352/J.ImagingSci.Technol.2024.68.4.040505

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  Copyright statement 
Copyright © Society for Imaging Science and Technology 2024
  Article timeline 
  • received November 2023
  • accepted February 2024

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