Eyeball Identification and Tracking using Digital Image Processing

Mehreen Naeem, Muhammad Jawad Khan, Talha Yousf
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Abstract

Real-time eyeball recognition and tracking using digital image processing techniques can give a way of communication. This paper presents the algorithm for tracking the position of eyes in real-time. The following method consists of two steps: face detection and eye-tracking. In vision-based human-computer interaction, skin color for face detection provides a useful cue. Firstly, face detection is done by combining RGB pixel color, HSI (Hue Saturation Intensity) and YCbCr (Luminance Chrome Blue Chrome Red) color based techniques. Then crop the colored face image from the image and divide cropped image into horizontal sections. As eyes are on the upper part of the face so we have used the speeded up robust features (SURF) key points based method on that section and select the strongest point which is located on the eye region. The eye region is segmented by pixel color techniques. Based on the proposed algorithm possibility of false eye detection is reduced. Experimental results show satisfactory performance in a real-time video stream with average accuracy of 97.2%.
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基于数字图像处理的眼球识别与跟踪
利用数字图像处理技术对眼球进行实时识别和跟踪,可以提供一种通信方式。提出了一种实时跟踪人眼位置的算法。下面的方法包括两个步骤:人脸检测和眼球追踪。在基于视觉的人机交互中,肤色为人脸检测提供了有用的线索。首先,人脸检测是通过结合RGB像素颜色、HSI(色相饱和度强度)和YCbCr(亮度铬蓝铬红)颜色技术来完成的。然后从图像中裁剪彩色人脸图像,并将裁剪后的图像分成水平部分。由于眼睛位于面部的上部,因此我们对该部分使用了基于加速鲁棒特征(SURF)关键点的方法,并选择位于眼睛区域的最强点。通过像素颜色技术对眼睛区域进行分割。在此基础上降低了假眼检测的可能性。实验结果表明,该算法在实时视频流中具有良好的性能,平均准确率达到97.2%。
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