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Main Authors: Li, Sunan, Lian, Hailun, Lu, Cheng, Zhao, Yan, Qi, Tianhua, Yang, Hao, Zong, Yuan, Zheng, Wenming
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.12973
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author Li, Sunan
Lian, Hailun
Lu, Cheng
Zhao, Yan
Qi, Tianhua
Yang, Hao
Zong, Yuan
Zheng, Wenming
author_facet Li, Sunan
Lian, Hailun
Lu, Cheng
Zhao, Yan
Qi, Tianhua
Yang, Hao
Zong, Yuan
Zheng, Wenming
contents The emotion recognition has attracted more attention in recent decades. Although significant progress has been made in the recognition technology of the seven basic emotions, existing methods are still hard to tackle compound emotion recognition that occurred commonly in practical application. This article introduces our achievements in the 7th Field Emotion Behavior Analysis (ABAW) competition. In the competition, we selected pre trained ResNet18 and Transformer, which have been widely validated, as the basic network framework. Considering the continuity of emotions over time, we propose a time pyramid structure network for frame level emotion prediction. Furthermore. At the same time, in order to address the lack of data in composite emotion recognition, we utilized fine-grained labels from the DFEW database to construct training data for emotion categories in competitions. Taking into account the characteristics of valence arousal of various complex emotions, we constructed a classification framework from coarse to fine in the label space.
format Preprint
id arxiv_https___arxiv_org_abs_2407_12973
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Temporal Label Hierachical Network for Compound Emotion Recognition
Li, Sunan
Lian, Hailun
Lu, Cheng
Zhao, Yan
Qi, Tianhua
Yang, Hao
Zong, Yuan
Zheng, Wenming
Computer Vision and Pattern Recognition
Artificial Intelligence
The emotion recognition has attracted more attention in recent decades. Although significant progress has been made in the recognition technology of the seven basic emotions, existing methods are still hard to tackle compound emotion recognition that occurred commonly in practical application. This article introduces our achievements in the 7th Field Emotion Behavior Analysis (ABAW) competition. In the competition, we selected pre trained ResNet18 and Transformer, which have been widely validated, as the basic network framework. Considering the continuity of emotions over time, we propose a time pyramid structure network for frame level emotion prediction. Furthermore. At the same time, in order to address the lack of data in composite emotion recognition, we utilized fine-grained labels from the DFEW database to construct training data for emotion categories in competitions. Taking into account the characteristics of valence arousal of various complex emotions, we constructed a classification framework from coarse to fine in the label space.
title Temporal Label Hierachical Network for Compound Emotion Recognition
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2407.12973