TeLL Me what you cant see
By: Saverio Cavasin , Pietro Biasetton , Mattia Tamiazzo and more
Potential Business Impact:
Makes old photos look new for police.
During criminal investigations, images of persons of interest directly influence the success of identification procedures. However, law enforcement agencies often face challenges related to the scarcity of high-quality images or their obsolescence, which can affect the accuracy and success of people searching processes. This paper introduces a novel forensic mugshot augmentation framework aimed at addressing these limitations. Our approach enhances the identification probability of individuals by generating additional, high-quality images through customizable data augmentation techniques, while maintaining the biometric integrity and consistency of the original data. Several experimental results show that our method significantly improves identification accuracy and robustness across various forensic scenarios, demonstrating its effectiveness as a trustworthy tool law enforcement applications. Index Terms: Digital Forensics, Person re-identification, Feature extraction, Data augmentation, Visual-Language models.
Similar Papers
Emergent AI Surveillance: Overlearned Person Re-Identification and Its Mitigation in Law Enforcement Context
CV and Pattern Recognition
AI can spot people even when not trained to.
Realism to Deception: Investigating Deepfake Detectors Against Face Enhancement
CV and Pattern Recognition
Makes fake faces harder to spot.
A Deep Learning Approach for Facial Attribute Manipulation and Reconstruction in Surveillance and Reconnaissance
CV and Pattern Recognition
Makes face recognition work better for everyone.