| Literature DB >> 29629433 |
Addison Mayberry1, Yamin Tun1, Pan Hu1, Duncan Smith-Freedman1, Benjamin Marlin1, Christopher Salthouse1, Deepak Ganesan1.
Abstract
The human eye offers a fascinating window into an individual's health, cognitive attention, and decision making, but we lack the ability to continually measure these parameters in the natural environment. We demonstrate CIDER, a system that operates in a highly optimized low-power mode under indoor settings by using a fast Search-Refine controller to track the eye, but detects when the environment switches to more challenging outdoor sunlight and switches models to operate robustly under this condition. Our design is holistic and tackles a) power consumption in digitizing pixels, estimating pupillary parameters, and illuminating the eye via near-infrared and b) error in estimating pupil center and pupil dilation. We demonstrate that CIDER can estimate pupil center with error less than two pixels (0.6°), and pupil diameter with error of one pixel (0.22mm). Our end-to-end results show that we can operate at power levels of roughly 7mW at a 4Hz eye tracking rate, or roughly 32mW at rates upwards of 250Hz.Entities:
Keywords: eye tracking; low-power sensing; mHealth; pupilometry
Year: 2016 PMID: 29629433 PMCID: PMC5886704 DOI: 10.1145/2857491.2884063
Source DB: PubMed Journal: Proc Eye Track Res Appl Symp