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Main Authors: Martirosyan, Arman, Tigranyan, Shahane, Razzhivina, Maria, Aslanyan, Artak, Salikhova, Nazgul, Makarov, Ilya, Savchenko, Andrey, Avetisyan, Aram
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.23291
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author Martirosyan, Arman
Tigranyan, Shahane
Razzhivina, Maria
Aslanyan, Artak
Salikhova, Nazgul
Makarov, Ilya
Savchenko, Andrey
Avetisyan, Aram
author_facet Martirosyan, Arman
Tigranyan, Shahane
Razzhivina, Maria
Aslanyan, Artak
Salikhova, Nazgul
Makarov, Ilya
Savchenko, Andrey
Avetisyan, Aram
contents Micro-gesture recognition and behavior-based emotion prediction are both highly challenging tasks that require modeling subtle, fine-grained human behaviors, primarily leveraging video and skeletal pose data. In this work, we present two multimodal frameworks designed to tackle both problems on the iMiGUE dataset. For micro-gesture classification, we explore the complementary strengths of RGB and 3D pose-based representations to capture nuanced spatio-temporal patterns. To comprehensively represent gestures, video, and skeletal embeddings are extracted using MViTv2-S and 2s-AGCN, respectively. Then, they are integrated through a Cross-Modal Token Fusion module to combine spatial and pose information. For emotion recognition, our framework extends to behavior-based emotion prediction, a binary classification task identifying emotional states based on visual cues. We leverage facial and contextual embeddings extracted using SwinFace and MViTv2-S models and fuse them through an InterFusion module designed to capture emotional expressions and body gestures. Experiments conducted on the iMiGUE dataset, within the scope of the MiGA 2025 Challenge, demonstrate the robust performance and accuracy of our method in the behavior-based emotion prediction task, where our approach secured 2nd place.
format Preprint
id arxiv_https___arxiv_org_abs_2512_23291
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Track Multimodal Learning on iMiGUE: Micro-Gesture and Emotion Recognition
Martirosyan, Arman
Tigranyan, Shahane
Razzhivina, Maria
Aslanyan, Artak
Salikhova, Nazgul
Makarov, Ilya
Savchenko, Andrey
Avetisyan, Aram
Computer Vision and Pattern Recognition
Micro-gesture recognition and behavior-based emotion prediction are both highly challenging tasks that require modeling subtle, fine-grained human behaviors, primarily leveraging video and skeletal pose data. In this work, we present two multimodal frameworks designed to tackle both problems on the iMiGUE dataset. For micro-gesture classification, we explore the complementary strengths of RGB and 3D pose-based representations to capture nuanced spatio-temporal patterns. To comprehensively represent gestures, video, and skeletal embeddings are extracted using MViTv2-S and 2s-AGCN, respectively. Then, they are integrated through a Cross-Modal Token Fusion module to combine spatial and pose information. For emotion recognition, our framework extends to behavior-based emotion prediction, a binary classification task identifying emotional states based on visual cues. We leverage facial and contextual embeddings extracted using SwinFace and MViTv2-S models and fuse them through an InterFusion module designed to capture emotional expressions and body gestures. Experiments conducted on the iMiGUE dataset, within the scope of the MiGA 2025 Challenge, demonstrate the robust performance and accuracy of our method in the behavior-based emotion prediction task, where our approach secured 2nd place.
title Multi-Track Multimodal Learning on iMiGUE: Micro-Gesture and Emotion Recognition
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.23291