CIDER:在计算眼镜上实现鲁棒性-功率权衡

A. Mayberry, Yamin Tun, Pan Hu, Duncan Smith-Freedman, Deepak Ganesan, Benjamin M Marlin, C. Salthouse
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引用次数: 19

摘要

人类的眼睛为观察个人的健康、认知注意力和决策能力提供了一个迷人的窗口,但我们缺乏在自然环境中持续测量这些参数的能力。挑战在于:a)处理来自相机的连续高速率传感的复杂性,并处理图像流以估计眼睛参数;b)处理自然环境中照明条件的广泛变化。本文探讨了可穿戴式眼动仪设计中固有的功率-鲁棒性权衡,并提出了一种新颖的分阶段架构,可以在现实世界的照明范围内进行优雅的适应。我们提出了CIDER,这是一个在室内设置下高度优化的低功耗模式下运行的系统,通过使用快速搜索-精炼控制器来跟踪眼睛,但当环境切换到更具挑战性的室外阳光时,它会检测到,并在这种条件下切换模型以稳定运行。我们的设计是整体的,并解决了a)数字化像素,估计瞳孔参数和通过近红外照亮眼睛的功耗,b)估计瞳孔中心和瞳孔扩张的误差,以及c)模型训练程序,无需用户付出任何努力。我们证明了CIDER可以估计瞳孔中心,误差小于2个像素(0.6),瞳孔直径误差小于1个像素(0.22mm)。我们的端到端结果表明,我们可以在4Hz眼动追踪速率下以大约7mW的功率水平运行,或者在250Hz以上的速率下以大约32mW的功率水平运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CIDER: Enabling Robustness-Power Tradeoffs on a Computational Eyeglass
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. The challenges lie in: a) handling the complexity of continuous high-rate sensing from a camera and processing the image stream to estimate eye parameters, and b) dealing with the wide variability in illumination conditions in the natural environment. This paper explores the power--robustness tradeoffs inherent in the design of a wearable eye tracker, and proposes a novel staged architecture that enables graceful adaptation across the spectrum of real-world illumination. We propose 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, b) error in estimating pupil center and pupil dilation, and c) model training procedures that involve zero effort from a user. We demonstrate that CIDER can estimate pupil center with error less than two pixels (0.6O), 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.
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