Cross-Domain Few-Shot Micro-Expression Recognition Incorporating Action Units
Cross-Domain Few-Shot Micro-Expression Recognition Incorporating Action Units
Blog Article
Micro-expression, different from ordinary facial expressions, is an involuntary, spontaneous, and subtle facial movement that reveals true emotions which people intend to conceal.As it usually occurs within a fraction of a second (less than 1/2 second) with a low action intensity, capturing micro-expressions among facial movements in a video is difficult.Moreover, when a micro-expression recognition system works in click here cold-start conditions, it has to recognize novel classes of micro-expressions in a new scenario, suffering from the lack of sufficient labeled samples.
Inconsistency in micro-expression labeling criteria makes it difficult to use existing labeled datasets in other scenarios.To tackle the challenges, we present a micro-expression recognizer, which on one hand leverages the knowledge of facial action units (AU) to enhance facial representations, and on the other hand performs cross-domain few-shot learning to transfer knowledge acquired from other domains with different data labeling protocols and feature distribution to overcome the scarcity of labeled samples in the cold-starting scenario.In particular, we draw inspirations from the correlation between micro-expression and facial action units (AUs), and design an action unit module, aiming to extract subtle AU-related features from videos.
We then fuse AU-related features and general features extracted by optical-flow facial images.Through fine-tuning, we transfer knowledge from datasets in different domains to the target domain.The experimental results on two datasets show that: (1) the proposed recognizer can effectively learn to recognize new categories of micro-expressions in different domains with a very few labeled samples with the UF1 score of 0.
544 on CASME dataset, outperforming the state-of-the-art methods by 0.089; (2) new belial model the performance of the recognizer is more competitive when it distinguishes micro-expression videos of more categories; and (3) the action unit module enables to improve the recognition performance by 0.072 and 0.
047 on CASME and SMIC, respectively.