Fast and Effective Adaptation of Facial Action Unit Detection Deep Model
Mihee Lee, Ognjen Rudovic, Vladimir Pavlovic, and Maja Pantic

TL;DR
This paper introduces a deep learning method based on model-agnostic meta-learning that quickly adapts facial action unit detection models to new AUs or subjects with minimal labeled data, outperforming non-adapted baselines.
Contribution
It presents a novel meta-learning approach for fast adaptation of facial AU detection models to new tasks with few labeled samples.
Findings
Effective adaptation to new AUs and subjects with few samples
Significant performance improvements over baseline models
Validated on BP4D and DISFA datasets
Abstract
Detecting facial action units (AU) is one of the fundamental steps in automatic recognition of facial expression of emotions and cognitive states. Though there have been a variety of approaches proposed for this task, most of these models are trained only for the specific target AUs, and as such they fail to easily adapt to the task of recognition of new AUs (i.e., those not initially used to train the target models). In this paper, we propose a deep learning approach for facial AU detection that can easily and in a fast manner adapt to a new AU or target subject by leveraging only a few labeled samples from the new task (either an AU or subject). To this end, we propose a modeling approach based on the notion of the model-agnostic meta-learning, originally proposed for the general image recognition/detection tasks (e.g., the character recognition from the Omniglot dataset).…
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Taxonomy
TopicsEmotion and Mood Recognition · Face recognition and analysis · Face and Expression Recognition
