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Bibliographic Details
Main Authors: Erşan, Merve, Girgin, Melike, Akgül, Tayfun
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.01836
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author Erşan, Merve
Girgin, Melike
Akgül, Tayfun
author_facet Erşan, Merve
Girgin, Melike
Akgül, Tayfun
contents Face detection with visible-spectrum cameras can capture facial features, but it often fails to distinguish live subjects from spoof sources such as photographs, masks, or statues. Previous approaches based on texture, motion, or physiological cues are sensitive to illumination changes and show limited robustness against spoofing attacks. Thermal imaging helps overcome these limitations by detecting heat emissions, naturally excluding spoof faces. This study proposes a hybrid approach that fuses the edge information of RGB images with corresponding thermal images using a custom ARISTOF dataset containing live and spoof faces. The fused images are first evaluated using the YOLOv8-Face model to compare face detection performance across RGB, thermal, and fused modalities. The results show that the proposed method enhances the face detection accuracy of thermal images. The fused images are subsequently used to train a YOLOv8-Face model for live and spoof classification, demonstrating that the proposed multimodal fusion effectively supports robust face liveness detection.
format Preprint
id arxiv_https___arxiv_org_abs_2606_01836
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Face Liveness Detection Using RGB and Thermal Image Fusion
Erşan, Merve
Girgin, Melike
Akgül, Tayfun
Image and Video Processing
Face detection with visible-spectrum cameras can capture facial features, but it often fails to distinguish live subjects from spoof sources such as photographs, masks, or statues. Previous approaches based on texture, motion, or physiological cues are sensitive to illumination changes and show limited robustness against spoofing attacks. Thermal imaging helps overcome these limitations by detecting heat emissions, naturally excluding spoof faces. This study proposes a hybrid approach that fuses the edge information of RGB images with corresponding thermal images using a custom ARISTOF dataset containing live and spoof faces. The fused images are first evaluated using the YOLOv8-Face model to compare face detection performance across RGB, thermal, and fused modalities. The results show that the proposed method enhances the face detection accuracy of thermal images. The fused images are subsequently used to train a YOLOv8-Face model for live and spoof classification, demonstrating that the proposed multimodal fusion effectively supports robust face liveness detection.
title Face Liveness Detection Using RGB and Thermal Image Fusion
topic Image and Video Processing
url https://arxiv.org/abs/2606.01836