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Showing papers by "Andrew Rabinovich published in 2021"


Patent
23 Feb 2021
TL;DR: In this paper, a trained neural network is used to estimate the gaze vector of an eye from an input image of the eye, where the input image may be provided to the neural network and the output data may include two-dimensional (2D) pupil data, eye segmentation data and cornea center data.
Abstract: Systems and methods for estimating a gaze vector of an eye using a trained neural network. An input image of the eye may be received from a camera. The input image may be provided to the neural network. Network output data may be generated using the neural network. The network output data may include two-dimensional (2D) pupil data, eye segmentation data, and/or cornea center data. The gaze vector may be computed based on the network output data. The neural network may be previously trained by providing a training input image to the neural network, generating training network output data, receiving ground-truth (GT) data, computing error data based on a difference between the training network output data and the GT data, and modifying the neural network based on the error data.

Patent
25 Feb 2021
TL;DR: In this paper, a neural network may include a set of feature encoding layers and a plurality of sets of task-specific layers that each operate on an output of the set of encoding layers.
Abstract: Techniques related to the computation of gaze vectors of users of wearable devices are disclosed. A neural network may be trained through first and second training steps. The neural network may include a set of feature encoding layers and a plurality of sets of task-specific layers that each operate on an output of the set of feature encoding layers. During the first training step, a first image of a first eye may be provided to the neural network, eye segmentation data may be generated using the neural network, and the set of feature encoding layers may be trained. During the second training step, a second image of a second eye may be provided to the neural network, network output data may be generated using the neural network, and the plurality of sets of task-specific layers may be trained.