A Novel Approach to Cross dataset studies in Facial Expression Recognition

Autor: Silvia Ramis, Jose M. Buades, Francisco J. Perales, Cristina Manresa-Yee
Rok vydání: 2022
Předmět:
Zdroj: Multimedia Tools and Applications. 81:39507-39544
ISSN: 1573-7721
1380-7501
Popis: Recognizing facial expressions is a challenging task both for computers and humans. Although recent deep learning-based approaches are achieving high accuracy results in this task, research in this area is mainly focused on improving results using a single dataset for training and testing. This approach lacks generality when applied to new images or when using it in in-the-wild contexts due to diversity in humans (e.g., age, ethnicity) and differences in capture conditions (e.g., lighting or background). The cross-datasets approach can overcome these limitations. In this work we present a method to combine multiple datasets and we conduct an exhaustive evaluation of a proposed system based on a CNN analyzing and comparing performance using single and cross-dataset approaches with other architectures. Results using the proposed system ranged from 31.56% to 61.78% when used in a single-dataset approach with different well-known datasets and improved up to 73.05% when using a cross-dataset approach. Finally, to study the system and humans’ performance in facial expressions classification, we compare the results of 253 participants with the system. Results show an 83.53% accuracy for humans and a correlation exists between the results obtained by the participants and the CNN.
Databáze: OpenAIRE