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Main Authors: Hannan, Syed Abdul, Bukhari, Hazim, Cantalapiedra, Thomas, Ansar, Eman, Baali, Massa, Singh, Rita, Raj, Bhiksha
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.01798
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author Hannan, Syed Abdul
Bukhari, Hazim
Cantalapiedra, Thomas
Ansar, Eman
Baali, Massa
Singh, Rita
Raj, Bhiksha
author_facet Hannan, Syed Abdul
Bukhari, Hazim
Cantalapiedra, Thomas
Ansar, Eman
Baali, Massa
Singh, Rita
Raj, Bhiksha
contents Face verification systems have seen substantial advancements; however, they often lack transparency in their decision-making processes. In this paper, we introduce an innovative Vision-Language Model (VLM) for Face Verification, which not only accurately determines if two face images depict the same individual but also explicitly explains the rationale behind its decisions. Our model is uniquely trained using two complementary explanation styles: (1) concise explanations that summarize the key factors influencing its decision, and (2) comprehensive explanations detailing the specific differences observed between the images. We adapt and enhance a state-of-the-art modeling approach originally designed for audio-based differentiation to suit visual inputs effectively. This cross-modal transfer significantly improves our model's accuracy and interpretability. The proposed VLM integrates sophisticated feature extraction techniques with advanced reasoning capabilities, enabling clear articulation of its verification process. Our approach demonstrates superior performance, surpassing baseline methods and existing models. These findings highlight the immense potential of vision language models in face verification set up, contributing to more transparent, reliable, and explainable face verification systems.
format Preprint
id arxiv_https___arxiv_org_abs_2601_01798
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle VerLM: Explaining Face Verification Using Natural Language
Hannan, Syed Abdul
Bukhari, Hazim
Cantalapiedra, Thomas
Ansar, Eman
Baali, Massa
Singh, Rita
Raj, Bhiksha
Computer Vision and Pattern Recognition
Artificial Intelligence
Face verification systems have seen substantial advancements; however, they often lack transparency in their decision-making processes. In this paper, we introduce an innovative Vision-Language Model (VLM) for Face Verification, which not only accurately determines if two face images depict the same individual but also explicitly explains the rationale behind its decisions. Our model is uniquely trained using two complementary explanation styles: (1) concise explanations that summarize the key factors influencing its decision, and (2) comprehensive explanations detailing the specific differences observed between the images. We adapt and enhance a state-of-the-art modeling approach originally designed for audio-based differentiation to suit visual inputs effectively. This cross-modal transfer significantly improves our model's accuracy and interpretability. The proposed VLM integrates sophisticated feature extraction techniques with advanced reasoning capabilities, enabling clear articulation of its verification process. Our approach demonstrates superior performance, surpassing baseline methods and existing models. These findings highlight the immense potential of vision language models in face verification set up, contributing to more transparent, reliable, and explainable face verification systems.
title VerLM: Explaining Face Verification Using Natural Language
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2601.01798