实时眼动追踪算法的开发

Siti Nuradlin Syahirah Sheikh Anwar, A. A. Aziz, Syed Hasan Adil
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引用次数: 3

摘要

本课题开发了一种实时眼动追踪算法,以提高虹膜检测和凝视分类的准确性。眼动追踪已经在许多应用中被用于检测驾驶员的意识、预测人类行为和帮助瘫痪的人。虹膜中心检测是眼动追踪发展的关键步骤,传统的圆形霍夫变换(CCHT)被广泛应用于虹膜检测。然而,在环境光变化的情况下,当物体头部不与相机垂直定位时,CCHT方法的精度会降低。为了克服这一问题,实现了面部地标检测器,将眼睛作为感兴趣区域(ROI)进行检测,通过对眼睛的左、右、中位置进行分类,跟踪眼睛并识别凝视对象。眼动追踪算法有一个附加功能,可以检测眼睛的眨眼情况,从而检测睡意。为了获得更好的精度,分类器使用基于像素强度水平的扫描方法对眼睛位置进行分类。眼动追踪算法是在OpenCV中使用Python软件实现的,便于移植。结果表明,虹膜检测和凝视位置分类的平均准确率分别达到100%和90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Real-Time Eye Tracking Algorithm
This project develops a real-time eye tracking algorithm to improve the accuracy of iris detection and gaze classification. Eye tracking has been utilized in many applications to detect driver awareness, predict human behaviour, and assist paralyzed individuals. Detecting the centre of iris is a crucial step in eye tracking development and Conventional Circular Hough Transform (CCHT) is widely used for the iris detection. However, the accuracy of the CCHT method decreases when the head of an object is not orthogonally positioned to the camera under ambient light changes. To overcome this problem, the facial landmark detector is implemented to detect the eyes as the Region of Interest (ROI), track the eyes and identify the gaze by classifying the eye positions to left, right and middle. The eye tracking algorithm has an added feature to detect eye blinking for drowsiness detection. To gain better accuracy, the classifier uses a scan method to classify the eye position based on the levels of pixel intensity. The eye tracking algorithm is implemented in OpenCV using Python Software for ease of portability. The results show that the average accuracy of 100% and 90% are achieved in the iris detection and gaze position classification, respectively.
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