Author
Listed:
- Chenbo Pei
(Center for Metrology Scientific Data, National Institute of Metrology, Beijing 100029, China
National Metrology Data Center, Beijing 100029, China
Key Laboratory of Metrology Digitalization and Digital Metrology, State Administration for Market Regulation, Beijing 100029, China)
- Bin Wang
(Center for Metrology Scientific Data, National Institute of Metrology, Beijing 100029, China
National Metrology Data Center, Beijing 100029, China
Key Laboratory of Metrology Digitalization and Digital Metrology, State Administration for Market Regulation, Beijing 100029, China)
- Xingchuang Xiong
(Center for Metrology Scientific Data, National Institute of Metrology, Beijing 100029, China
National Metrology Data Center, Beijing 100029, China
Key Laboratory of Metrology Digitalization and Digital Metrology, State Administration for Market Regulation, Beijing 100029, China)
- Zhanshuo Cao
(Center for Metrology Scientific Data, National Institute of Metrology, Beijing 100029, China
National Metrology Data Center, Beijing 100029, China
Key Laboratory of Metrology Digitalization and Digital Metrology, State Administration for Market Regulation, Beijing 100029, China)
- Zilong Liu
(Center for Metrology Scientific Data, National Institute of Metrology, Beijing 100029, China
National Metrology Data Center, Beijing 100029, China
Key Laboratory of Metrology Digitalization and Digital Metrology, State Administration for Market Regulation, Beijing 100029, China)
Abstract
With the development of the Internet of Things (IoT) and microelectronics technology, the methods used to tamper with fuel dispensers have become increasingly concealed, posing significant challenges to market supervision and law enforcement. This paper releases a tampering features dataset of assembled printed circuit boards (PCBs) from fuel dispensers, aiming to provide high-quality data support for automated, computer-vision-based illicit metering detection. The dataset encompasses multi-class tampering features derived from 189 high-resolution images of PCBs seized during real-world law enforcement, covering 5 mainstream brands. To eliminate perspective bias, rigorous lens distortion correction and four-point homography transformation preprocessing were conducted on the images. Additionally, six typical tampering features (e.g., the addition of tampered surface-mount resistors) were manually and precisely annotated, and then cross-checked and confirmed by domain experts. Furthermore, the dataset was benchmarked using multiple generations of You Only Look Once (YOLO) object detection models (Baseline Validation), which have been demonstrated to handle both large and small object detection in high-resolution images. The evaluation results, including confusion matrices and t-distributed Stochastic Neighbor Embedding (t-SNE) feature clustering diagrams, demonstrate the reliability and effectiveness of this dataset for training high-precision fraud detection models. This dataset is intended to support computer vision and anti-fraud research, promoting the automated development of fuel dispenser tampering detection.
Suggested Citation
Chenbo Pei & Bin Wang & Xingchuang Xiong & Zhanshuo Cao & Zilong Liu, 2026.
"FD-TamperBoard: A Tampering Features Dataset of Fuel Dispenser PCBs for Illicit Metering Detection,"
Data, MDPI, vol. 11(5), pages 1-11, May.
Handle:
RePEc:gam:jdataj:v:11:y:2026:i:5:p:107-:d:1936791
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