Omni-supervised Facial Expression Recognition via Distilled Data
Ping Liu, Yunchao Wei, Zibo Meng, Weihong Deng, Joey Tianyi Zhou, Yi, Yang

TL;DR
This paper introduces an omni-supervised learning framework for facial expression recognition that leverages reliable samples from large unlabeled datasets and employs dataset distillation to enhance training efficiency and model performance.
Contribution
The paper proposes a novel omni-supervised learning approach combined with dataset distillation to improve FER performance and efficiency using large unlabeled datasets.
Findings
Significant performance improvements on FER benchmarks.
Effective dataset distillation reduces training time and computational costs.
Distilled data boosts FER accuracy with minimal additional resources.
Abstract
Facial expression plays an important role in understanding human emotions. Most recently, deep learning based methods have shown promising for facial expression recognition. However, the performance of the current state-of-the-art facial expression recognition (FER) approaches is directly related to the labeled data for training. To solve this issue, prior works employ the pretrain-and-finetune strategy, i.e., utilize a large amount of unlabeled data to pretrain the network and then finetune it by the labeled data. As the labeled data is in a small amount, the final network performance is still restricted. From a different perspective, we propose to perform omni-supervised learning to directly exploit reliable samples in a large amount of unlabeled data for network training. Particularly, a new dataset is firstly constructed using a primitive model trained on a small number of labeled…
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Taxonomy
TopicsEmotion and Mood Recognition · Face and Expression Recognition · Face recognition and analysis
