TAL EmotioNet Challenge 2020 Rethinking the Model Chosen Problem in Multi-Task Learning

04/21/2020
by   Pengcheng Wang, et al.
1

This paper introduces our approach to the EmotioNet Challenge 2020. We pose the AU recognition problem as a multi-task learning problem, where the non-rigid facial muscle motion (mainly the first 17 AUs) and the rigid head motion (the last 6 AUs) are modeled separately. The co-occurrence of the expression features and the head pose features are explored. We observe that different AUs converge at various speed. By choosing the optimal checkpoint for each AU, the recognition results are improved. We are able to obtain a final score of 0.746 in validation set and 0.7306 in the test set of the challenge.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/16/2023

When is an SHM problem a Multi-Task-Learning problem?

Multi-task neural networks learn tasks simultaneously to improve individ...
research
11/08/2019

Dynamic Deep Multi-task Learning for Caricature-Visual Face Recognition

Rather than the visual images, the face recognition of the caricatures i...
research
07/22/2022

An Ensemble Approach for Multiple Emotion Descriptors Estimation Using Multi-task Learning

This paper illustrates our submission method to the fourth Affective Beh...
research
07/19/2022

Emotion Recognition based on Multi-Task Learning Framework in the ABAW4 Challenge

This paper presents our submission to the Multi-Task Learning (MTL) Chal...
research
03/10/2020

Cross-modal Multi-task Learning for Graphic Recognition of Caricature Face

Face recognition of realistic visual images has been well studied and ma...
research
05/21/2021

Puck localization and multi-task event recognition in broadcast hockey videos

Puck localization is an important problem in ice hockey video analytics ...
research
06/12/2020

CUHK at SemEval-2020 Task 4: CommonSense Explanation, Reasoning and Prediction with Multi-task Learning

This paper describes our system submitted to task 4 of SemEval 2020: Com...

Please sign up or login with your details

Forgot password? Click here to reset