CVJan 14

SPOT-Face: Forensic Face Identification using Attention Guided Optimal Transport

arXiv:2601.09229v1h-index: 2
Originality Incremental advance
AI Analysis

This addresses a specific challenge in forensic investigations for identifying victims when DNA evidence is unavailable, representing an incremental advancement in domain-specific methods.

The paper tackles the problem of cross-domain forensic face identification by matching skeleton and sketch images to faces, achieving significant improvements in recall and mAP metrics over existing graph-based baselines.

Person identification in forensic investigations becomes very challenging when common identification means for DNA (i.e., hair strands, soft tissue) are not available. Current methods utilize deep learning methods for face recognition. However, these methods lack effective mechanisms to model cross-domain structural correspondence between two different forensic modalities. In this paper, we introduce a SPOT-Face, a superpixel graph-based framework designed for cross-domain forensic face identification of victims using their skeleton and sketch images. Our unified framework involves constructing a superpixel-based graph from an image and then using different graph neural networks(GNNs) backbones to extract the embeddings of these graphs, while cross-domain correspondence is established through attention-guided optimal transport mechanism. We have evaluated our proposed framework on two publicly available dataset: IIT\_Mandi\_S2F (S2F) and CUFS. Extensive experiments were conducted to evaluate our proposed framework. The experimental results show significant improvement in identification metrics ( i.e., Recall, mAP) over existing graph-based baselines. Furthermore, our framework demonstrates to be highly effective for matching skulls and sketches to faces in forensic investigations.

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