This paper proposes a novel convolution neural network model for dense PCB component detection by introducing several modifications onto YOLOv8. The proposed model outper...
Abstract:
Effective detection of dense printed circuit board (PCB) components contributes to the optimization of automatic flow of production. In addition, PCB component recognitio...Show MoreMetadata
Abstract:
Effective detection of dense printed circuit board (PCB) components contributes to the optimization of automatic flow of production. In addition, PCB component recognition is also the essential prerequisite for early defect detection. Current PCB component detection approaches are not adept in both rapid and precise detection. YOLOv8 models have exhibited effective performances for detecting common objects, such as person, car, chair, dog etc. However, it is still tricky for YOLOv8 models to inspect dense and disparate PCB components precisely. Thus, a novel convolution neural network (CNN) model is proposed for dense PCB component detection by introducing several modifications onto YOLOv8. First, creative C2Focal module is designed as the core element of the backbone, combining both fine-grained local and coarse-grained global features concurrently. Then, the lightweight Ghost convolutions are inserted to effectively reduce the computation cost, meanwhile maintaining the detection performance. Finally, a new bounding box regression loss that is Sig-IoU loss, is proposed to facilitate the prediction regression and promote the positioning accuracy. The experiments on our PCB component dataset demonstrate that our proposed model performs the highest mean average precisions of 87.7% (mAP@0.5) and 75.3% (mAP@0.5:0.95) respectively, exceeding other state-of-the-arts. Besides, the detection speed hits 110 frames per second using RTX A4000, which is potential to realize the real-time inspection.
This paper proposes a novel convolution neural network model for dense PCB component detection by introducing several modifications onto YOLOv8. The proposed model outper...
Published in: IEEE Access ( Volume: 11)
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- IEEE Keywords
- Index Terms
- Printed Circuit Board ,
- Precise Detection ,
- Density Of Component ,
- Printed Circuit Board Components ,
- Computational Cost ,
- Convolutional Neural Network ,
- Local Features ,
- Detection Performance ,
- Bounding Box ,
- Convolutional Neural Network Model ,
- Mean Average Precision ,
- Detection Speed ,
- Bounding Box Regression ,
- Learning Algorithms ,
- State Of The Art ,
- Feature Maps ,
- Deep Learning Models ,
- Public Datasets ,
- Precision And Recall ,
- Types Of Defects ,
- Amount Of Parameters ,
- Faster R-CNN ,
- Classical Components ,
- Types Of Components ,
- Traditional Machine Learning ,
- Convolution Module ,
- Depthwise Convolution ,
- Frames Per Second ,
- Solder Joints ,
- Fused Feature Map
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Printed Circuit Board ,
- Precise Detection ,
- Density Of Component ,
- Printed Circuit Board Components ,
- Computational Cost ,
- Convolutional Neural Network ,
- Local Features ,
- Detection Performance ,
- Bounding Box ,
- Convolutional Neural Network Model ,
- Mean Average Precision ,
- Detection Speed ,
- Bounding Box Regression ,
- Learning Algorithms ,
- State Of The Art ,
- Feature Maps ,
- Deep Learning Models ,
- Public Datasets ,
- Precision And Recall ,
- Types Of Defects ,
- Amount Of Parameters ,
- Faster R-CNN ,
- Classical Components ,
- Types Of Components ,
- Traditional Machine Learning ,
- Convolution Module ,
- Depthwise Convolution ,
- Frames Per Second ,
- Solder Joints ,
- Fused Feature Map
- Author Keywords