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Pupil detection schemes in human eye: a review

机译:人眼中的瞳孔检测方案:综述

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摘要

Pupil detection in a human eyeimage or video plays a key role in many applications such as eye-tracking, diabetic retinopathy screening, smart homes, iris recognition, etc. Literature reveals pupil detection faces many complications including light reflections, cataract disease, pupil constriction/dilation moments, contact lenses, eyebrows, eyelashes, hair strips, and closed eye. To cope with these challenges, research community has been struggling to devise resilient pupil localization schemes for the image/video data collected using the near-infrared (NIR) or visible spectrum (VS) illumination. This study presents a critical review of numerous pupil detection schemes taken from standard sources. This review includes pupil localization schemes based on machine learning, histogram/thresholding, Integro-differential operator (IDO), Hough transform and among others. The probable pros and cons of each scheme are highlighted. Finally, this study offers recommendations for designing a robust pupil detection system. As scope of pupil detection is very broader, therefore this review would be a great source of information for the relevant research community.
机译:人类腹部或视频中的瞳孔检测在许多应用中起着关键作用,如眼睛跟踪,糖尿病视网膜病筛查,智能家庭,虹膜识别等。文学揭示了瞳孔检测面临许多并发症,包括光反射,白内障疾病,瞳孔收缩/扩张矩,隐形眼镜,眉毛,睫毛,头发条,闭眼。为了应对这些挑战,研究界一直在努力设计使用近红外(NIR)或可见光谱(VS)照明收集的图像/视频数据的弹性瞳孔定位方案。本研究提出了对众多瞳孔检测方案的批判性审查。该评论包括基于机器学习,直方图/阈值,积分差分运算符(IDO),Hough变换等的瞳孔本地化方案。每个方案的可能优势和利弊都突出显示。最后,本研究提供了设计强大的瞳孔检测系统的建议。随着瞳孔检测的范围非常广泛,因此本综述将是相关研究界的伟大信息来源。

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