Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

EAC-Net: A Region-based Deep Enhancing and Cropping Approach for Facial Action Unit Detection

About

In this paper, we propose a deep learning based approach for facial action unit detection by enhancing and cropping the regions of interest. The approach is implemented by adding two novel nets (layers): the enhancing layers and the cropping layers, to a pretrained CNN model. For the enhancing layers, we designed an attention map based on facial landmark features and applied it to a pretrained neural network to conduct enhanced learning (The E-Net). For the cropping layers, we crop facial regions around the detected landmarks and design convolutional layers to learn deeper features for each facial region (C-Net). We then fuse the E-Net and the C-Net to obtain our Enhancing and Cropping (EAC) Net, which can learn both feature enhancing and region cropping functions. Our approach shows significant improvement in performance compared to the state-of-the-art methods applied to BP4D and DISFA AU datasets.

Wei Li, Farnaz Abtahi, Zhigang Zhu, Lijun Yin• 2017

Related benchmarks

TaskDatasetResultRank
Facial Action Unit DetectionDISFA
F1 (AU 1)41.5
47
Action Unit DetectionBP4D
Average F1 Score55.9
43
Action Unit DetectionDISFA
F1 (Frame) AU141.5
21
Action Unit DetectionBP4D (3-fold cross val)
Average F155.9
17
Action Unit DetectionGFT (test)
F1 Score46.1
12
Facial Action Unit DetectionBP4D (test)
F1 (Frame)0.559
7
Showing 6 of 6 rows

Other info

Follow for update