Rapid, autonomous and ultra-large-area detection of latent fingerprints using object-driven optical coherence tomography
Bin He, Yejiong Shi, Zhenwen Sun, Xiaojun Li, Xiyuan Hu, Lei Wang, Lanchi Xie, Yuwen Yan, Zhihui Li, Zhigang Li, Chengming Wang, Ping Xue, Ning Zhang
- 发表年份
- 2024
- 引用次数
- 7
摘要
The detection of latent fingerprints plays a crucial role in criminal investigations and biometrics. However, conventional techniques are limited by their lack of depth-resolved imaging, extensive area coverage, and autonomous fingerprint detection capabilities. This study introduces an object-driven optical coherence tomography (OD-OCT) to achieve rapid, autonomous and ultra-large-area detection of latent fingerprints. First, by utilizing sparse sampling with the robotic arm along the slow axis, we continuously acquire B-scans across large, variably shaped areas (∼400 cm 2 ), achieving a scanning speed up to 100 times faster. In parallel, a deep learning model autonomously processes the real-time stream of B-scans, detecting fingerprints and their locations. The system then performs high-resolution three-dimensional imaging of these detected areas, exclusively visualizing the latent fingerprints. This approach significantly enhances the imaging efficiency while balancing the traditional OCT system's trade-offs between scanning range, speed, and lateral resolution, thus offering a breakthrough in rapid, large-area object detection.
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