FlowID : Enhancing Forensic Identification with Latent Flow-Matching Models
Jules Ripoll, David Bertoin, Alasdair Newson, Charles Dossal, Jose Pablo Baraybar

TL;DR
FlowID is a novel facial reconstruction method that leverages advanced image generation models to produce identity-preserving portraits from severely damaged faces, aiding forensic identification.
Contribution
The paper introduces FlowID, combining single-image fine-tuning and attention-based masking, and presents InjuredFaces, a new benchmark for evaluating facial reconstruction under extreme damage.
Findings
FlowID outperforms existing open-source methods in accuracy.
It maintains low memory requirements for local deployment.
InjuredFaces provides a new standardized evaluation resource.
Abstract
Every day, many people die under violent circumstances, whether from crimes, war, migration, or climate disasters. Medico-legal and law enforcement institutions document many portraits of the deceased for evidence, but cannot immediately carry out identification on them. While traditional image editing tools can process these photos for public release, the workflow is lengthy and produces suboptimal results. In this work, we leverage advances in image generation models, which can now produce photorealistic human portraits, to introduce FlowID, an identity-preserving facial reconstruction method. Our approach combines single-image fine-tuning, which adapts the generative model to out-of-distribution injured faces, with attention-based masking that localizes edits to damaged regions while preserving identity-critical features. Together, these components enable the removal of artifacts…
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