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Main Authors: Fu, Changzeng, Fu, Zelin, Zhang, Qi, Kuang, Xinhe, Dong, Jiacheng, Su, Kaifeng, Su, Yikai, Shi, Wenbo, Yao, Junfeng, Zhao, Yuliang, Zhao, Shiqi, Wang, Jiadong, Song, Siyang, Liu, Chaoran, Yoshikawa, Yuichiro, Schuller, Björn, Ishiguro, Hiroshi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.10034
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author Fu, Changzeng
Fu, Zelin
Zhang, Qi
Kuang, Xinhe
Dong, Jiacheng
Su, Kaifeng
Su, Yikai
Shi, Wenbo
Yao, Junfeng
Zhao, Yuliang
Zhao, Shiqi
Wang, Jiadong
Song, Siyang
Liu, Chaoran
Yoshikawa, Yuichiro
Schuller, Björn
Ishiguro, Hiroshi
author_facet Fu, Changzeng
Fu, Zelin
Zhang, Qi
Kuang, Xinhe
Dong, Jiacheng
Su, Kaifeng
Su, Yikai
Shi, Wenbo
Yao, Junfeng
Zhao, Yuliang
Zhao, Shiqi
Wang, Jiadong
Song, Siyang
Liu, Chaoran
Yoshikawa, Yuichiro
Schuller, Björn
Ishiguro, Hiroshi
contents Depression is a widespread mental health issue affecting diverse age groups, with notable prevalence among college students and the elderly. However, existing datasets and detection methods primarily focus on young adults, neglecting the broader age spectrum and individual differences that influence depression manifestation. Current approaches often establish a direct mapping between multimodal data and depression indicators, failing to capture the complexity and diversity of depression across individuals. This challenge includes two tracks based on age-specific subsets: Track 1 uses the MPDD-Elderly dataset for detecting depression in older adults, and Track 2 uses the MPDD-Young dataset for detecting depression in younger participants. The Multimodal Personality-aware Depression Detection (MPDD) Challenge aims to address this gap by incorporating multimodal data alongside individual difference factors. We provide a baseline model that fuses audio and video modalities with individual difference information to detect depression manifestations in diverse populations. This challenge aims to promote the development of more personalized and accurate de pression detection methods, advancing mental health research and fostering inclusive detection systems. More details are available on the official challenge website: https://hacilab.github.io/MPDDChallenge.github.io.
format Preprint
id arxiv_https___arxiv_org_abs_2505_10034
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The First MPDD Challenge: Multimodal Personality-aware Depression Detection
Fu, Changzeng
Fu, Zelin
Zhang, Qi
Kuang, Xinhe
Dong, Jiacheng
Su, Kaifeng
Su, Yikai
Shi, Wenbo
Yao, Junfeng
Zhao, Yuliang
Zhao, Shiqi
Wang, Jiadong
Song, Siyang
Liu, Chaoran
Yoshikawa, Yuichiro
Schuller, Björn
Ishiguro, Hiroshi
Artificial Intelligence
68T07
I.2.0; H.5.1
Depression is a widespread mental health issue affecting diverse age groups, with notable prevalence among college students and the elderly. However, existing datasets and detection methods primarily focus on young adults, neglecting the broader age spectrum and individual differences that influence depression manifestation. Current approaches often establish a direct mapping between multimodal data and depression indicators, failing to capture the complexity and diversity of depression across individuals. This challenge includes two tracks based on age-specific subsets: Track 1 uses the MPDD-Elderly dataset for detecting depression in older adults, and Track 2 uses the MPDD-Young dataset for detecting depression in younger participants. The Multimodal Personality-aware Depression Detection (MPDD) Challenge aims to address this gap by incorporating multimodal data alongside individual difference factors. We provide a baseline model that fuses audio and video modalities with individual difference information to detect depression manifestations in diverse populations. This challenge aims to promote the development of more personalized and accurate de pression detection methods, advancing mental health research and fostering inclusive detection systems. More details are available on the official challenge website: https://hacilab.github.io/MPDDChallenge.github.io.
title The First MPDD Challenge: Multimodal Personality-aware Depression Detection
topic Artificial Intelligence
68T07
I.2.0; H.5.1
url https://arxiv.org/abs/2505.10034