Evaluating Facial Expression Recognition Datasets for Deep Learning: A Benchmark Study with Novel Similarity Metrics
By: F. Xavier Gaya-Morey , Cristina Manresa-Yee , Célia Martinie and more
Potential Business Impact:
Helps computers understand emotions better.
This study investigates the key characteristics and suitability of widely used Facial Expression Recognition (FER) datasets for training deep learning models. In the field of affective computing, FER is essential for interpreting human emotions, yet the performance of FER systems is highly contingent on the quality and diversity of the underlying datasets. To address this issue, we compiled and analyzed 24 FER datasets, including those targeting specific age groups such as children, adults, and the elderly, and processed them through a comprehensive normalization pipeline. In addition, we enriched the datasets with automatic annotations for age and gender, enabling a more nuanced evaluation of their demographic properties. To further assess dataset efficacy, we introduce three novel metricsLocal, Global, and Paired Similarity, which quantitatively measure dataset difficulty, generalization capability, and cross-dataset transferability. Benchmark experiments using state-of-the-art neural networks reveal that large-scale, automatically collected datasets (e.g., AffectNet, FER2013) tend to generalize better, despite issues with labeling noise and demographic biases, whereas controlled datasets offer higher annotation quality but limited variability. Our findings provide actionable recommendations for dataset selection and design, advancing the development of more robust, fair, and effective FER systems.
Similar Papers
Biased Heritage: How Datasets Shape Models in Facial Expression Recognition
CV and Pattern Recognition
Makes AI understand faces without unfairness.
Multi-modal Transfer Learning for Dynamic Facial Emotion Recognition in the Wild
CV and Pattern Recognition
Helps computers understand emotions from faces better.
An Evaluation of a Visual Question Answering Strategy for Zero-shot Facial Expression Recognition in Still Images
CV and Pattern Recognition
Lets computers understand faces without prior training.