<p>During criminal investigations, the availability of usable face imagery for persons of interest directly affects downstream investigative activities, including poster standardization and human-based search and review. In practice, agencies often face scarcity of high-quality images, heterogeneous capture conditions, and obsolescence, which can reduce the utility of available evidence and hinder timely information sharing. This paper introduces a forensic-oriented mugshot augmentation framework and evaluation protocol to support law-enforcement workflows with modern vision-language and generative models. The proposed modular pipeline optionally enhances low-quality inputs, extracts structured poster-style physical descriptors from a single image, and generates controlled synthetic portraits conditioned on those descriptors while monitoring identity consistency. By formalizing these steps and their associated measurements, the framework provides a reproducible reference for studying how such technologies behave under realistic constraints and for identifying failure cases relevant to forensic use. On the evaluated dataset, attribute extraction reached <InlineEquation ID="IEq1"> <EquationSource Format="TEX">\(83.1\%\)</EquationSource> <EquationSource Format="MATHML"><math> <mrow> <mn>83.1</mn> <mo>%</mo> </mrow> </math></EquationSource> </InlineEquation> (+ 2.3 percentage points over the original mugshots), and re-identification backends showed clear separation between same-subject and different-subject pairs (similarity <InlineEquation ID="IEq2"> <EquationSource Format="TEX">\(\sim\)</EquationSource> <EquationSource Format="MATHML"><math> <mo>∼</mo> </math></EquationSource> </InlineEquation> 0.70 vs. <InlineEquation ID="IEq3"> <EquationSource Format="TEX">\(\sim\)</EquationSource> <EquationSource Format="MATHML"><math> <mo>∼</mo> </math></EquationSource> </InlineEquation> 0.50). These results indicate that the framework can improve descriptor faithfulness and support identity-consistent augmentation under the tested conditions; limitations and forensic-relevant risks (e.g., appearance drift and demographic sensitivity) are explicitly discussed.</p>

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TeLL-me what you cannot see: a vision-language framework for forensic mugshot augmentation

  • Saverio Cavasin,
  • Mattia Tamiazzo,
  • Pietro Biasetton,
  • Simone Milani,
  • Mauro Conti

摘要

During criminal investigations, the availability of usable face imagery for persons of interest directly affects downstream investigative activities, including poster standardization and human-based search and review. In practice, agencies often face scarcity of high-quality images, heterogeneous capture conditions, and obsolescence, which can reduce the utility of available evidence and hinder timely information sharing. This paper introduces a forensic-oriented mugshot augmentation framework and evaluation protocol to support law-enforcement workflows with modern vision-language and generative models. The proposed modular pipeline optionally enhances low-quality inputs, extracts structured poster-style physical descriptors from a single image, and generates controlled synthetic portraits conditioned on those descriptors while monitoring identity consistency. By formalizing these steps and their associated measurements, the framework provides a reproducible reference for studying how such technologies behave under realistic constraints and for identifying failure cases relevant to forensic use. On the evaluated dataset, attribute extraction reached \(83.1\%\) 83.1 % (+ 2.3 percentage points over the original mugshots), and re-identification backends showed clear separation between same-subject and different-subject pairs (similarity \(\sim\)  0.70 vs. \(\sim\)  0.50). These results indicate that the framework can improve descriptor faithfulness and support identity-consistent augmentation under the tested conditions; limitations and forensic-relevant risks (e.g., appearance drift and demographic sensitivity) are explicitly discussed.