Distribution Matching for Heterogeneous Multi-Task Learning: a Large-scale Face Study
Dimitrios Kollias, Viktoriia Sharmanska, Stefanos Zafeiriou

TL;DR
This paper introduces a novel distribution matching approach for heterogeneous multi-task learning in large-scale face analysis, enabling joint learning of diverse facial behavior tasks with improved performance and zero-shot capabilities.
Contribution
It proposes a new distribution matching method for heterogeneous MTL, creating FaceBehaviorNet for comprehensive facial analysis, and demonstrates significant performance gains across multiple face-related tasks.
Findings
Outperforms state-of-the-art in all evaluated tasks and databases.
Enables zero-/few-shot learning for unseen facial tasks.
Alleviates negative transfer through task relatedness co-training.
Abstract
Multi-Task Learning has emerged as a methodology in which multiple tasks are jointly learned by a shared learning algorithm, such as a DNN. MTL is based on the assumption that the tasks under consideration are related; therefore it exploits shared knowledge for improving performance on each individual task. Tasks are generally considered to be homogeneous, i.e., to refer to the same type of problem. Moreover, MTL is usually based on ground truth annotations with full, or partial overlap across tasks. In this work, we deal with heterogeneous MTL, simultaneously addressing detection, classification & regression problems. We explore task-relatedness as a means for co-training, in a weakly-supervised way, tasks that contain little, or even non-overlapping annotations. Task-relatedness is introduced in MTL, either explicitly through prior expert knowledge, or through data-driven studies. We…
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Taxonomy
TopicsEmotion and Mood Recognition · Domain Adaptation and Few-Shot Learning · Face recognition and analysis
