Latent Fingerprint Quality Assessment for Criminal Investigations: A Benchmark Dataset and Method

  • Chao Huang
  • , Jingxuan Zhang
  • , Ye Zhang
  • , Hao Wu
  • , Peibei Cao
  • , Zhihua Wang
  • , Yang Yu*
  • , Xiaochun Cao
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Fingerprint biometrics plays a crucial role in biometric identification, especially in applications such as criminal investigations. Although recent progress in recognition methodology has significantly enhanced automated fingerprint recognition, these systems still rely heavily on the quality of the input fingerprints. In criminal investigations, fingerprints are often of low quality due to their incidental deposition from natural oils and sweat, rather than being deliberately captured under controlled conditions. This degradation can significantly impact usability and identification accuracy, underscoring the need for effective Fingerprint Quality Assessment (FQA) methods. In this paper, we establish the Crime Scene Fingerprints quality assessment Dataset (CSFD-10k), the largest dataset of its kind, containing 11,500 fingerprint images from real criminal investigations. Of these, 10,000 samples are assigned Mean Opinion Scores (MOSs) for correlation testing, while the remaining 1,500 are labeled based on matching performance for generalizability testing. All labels are provided by frontline criminal police officers. Using this dataset, we propose a deep neural network-based Dual-Branch FQA (DB-FQA) framework that integrates image-level and edge-level features. The DB-FQA enhances ridge details by transforming raw grayscale fingerprints into edge maps using the Logical/Linear operator. A dual-branch network processes both the raw fingerprint and the edge map, and the Multi-scale Adaptive Cross feature Fusion (MACF) module fuses these features, guided by the edge map to highlight quality-related regions of interest. Extensive experiments demonstrate the robustness and superiority of our proposed method, offering substantial support for forensic fingerprint biometrics.

Original languageEnglish
JournalIEEE Transactions on Image Processing
DOIs
Publication statusAccepted/In press - 2026
Externally publishedYes

Keywords

  • Biometric identifier
  • Criminal investigation
  • Fingerprint biometrics
  • Fingerprint quality assessment

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