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Gaze Estimation for Assisted Living Environments

About

Effective assisted living environments must be able to perform inferences on how their occupants interact with one another as well as with surrounding objects. To accomplish this goal using a vision-based automated approach, multiple tasks such as pose estimation, object segmentation and gaze estimation must be addressed. Gaze direction in particular provides some of the strongest indications of how a person interacts with the environment. In this paper, we propose a simple neural network regressor that estimates the gaze direction of individuals in a multi-camera assisted living scenario, relying only on the relative positions of facial keypoints collected from a single pose estimation model. To handle cases of keypoint occlusion, our model exploits a novel confidence gated unit in its input layer. In addition to the gaze direction, our model also outputs an estimation of its own prediction uncertainty. Experimental results on a public benchmark demonstrate that our approach performs on pair with a complex, dataset-specific baseline, while its uncertainty predictions are highly correlated to the actual angular error of corresponding estimations. Finally, experiments on images from a real assisted living environment demonstrate the higher suitability of our model for its final application.

Philipe A. Dias, Damiano Malafronte, Henry Medeiros, Francesca Odone• 2019

Related benchmarks

TaskDatasetResultRank
3D Gaze EstimationGAFA Living Room
2D MAE25.2
9
3D Gaze EstimationGAFA Kitchen
MAE2D19.8
9
3D Gaze EstimationGAFA All
MAE2D27.1
9
3D Gaze EstimationGAFA Library
MAE2D24.9
9
3D Gaze EstimationGAFA Office
MAE2D27.2
9
3D Gaze EstimationGAFA Courtyard
MAE2D36.1
9
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