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Cristina Palmero; Javier Selva; Mohammad Ali Bagheri; Sergio Escalera

Abstract
Gaze behavior is an important non-verbal cue in social signal processing and human-computer interaction. In this paper, we tackle the problem of person- and head pose-independent 3D gaze estimation from remote cameras, using a multi-modal recurrent convolutional neural network (CNN). We propose to combine face, eyes region, and face landmarks as individual streams in a CNN to estimate gaze in still images. Then, we exploit the dynamic nature of gaze by feeding the learned features of all the frames in a sequence to a many-to-one recurrent module that predicts the 3D gaze vector of the last frame. Our multi-modal static solution is evaluated on a wide range of head poses and gaze directions, achieving a significant improvement of 14.6% over the state of the art on EYEDIAP dataset, further improved by 4% when the temporal modality is included.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| gaze-estimation-on-eyediap-floating-target | RecurrentGaze (Static) | Angular Error: 5.43 |
| gaze-estimation-on-eyediap-floating-target | RecurrentGaze (Temporal) | Angular Error: 5.19 |
| gaze-estimation-on-eyediap-screen-target | RecurrentGaze (Static) | Angular Error: 3.38 |
| gaze-estimation-on-eyediap-screen-target | RecurrentGaze (Temporal) | Angular Error: 3.4 |
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