基于k均值聚类和马氏距离技术的眼球震颤诊断瞳孔提取系统

T. Charoenpong, S. Thewsuwan, Theerasak Chanwimalueang, V. Mahasithiwat
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引用次数: 8

摘要

眩晕是头晕的一种,它是由眼球震颤引起的。医生可以通过观察内眼的运动来诊断这种疾病。眼球震颤诊断系统需要高效、精确的瞳孔提取系统。本文提出了一种基于k均值聚类和马氏距离的瞳孔提取方法。图像序列通过安装在双目上的红外摄像机捕获。眼动追踪算法由k均值聚类和马氏距离组成。基于瞳孔的暗度,采用K-means聚类算法分割黑色像素。提取的区域为瞳孔,但存在噪声。利用马氏距离技术消除噪声数据。然后取出瞳孔。实验结果表明,从9个图像序列中选取1869帧来测试该方法的性能。精度为73.68%,精度误差为3.18像素。
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Pupil extraction system for Nystagmus diagnosis by using K-mean clustering and Mahalanobis distance technique
As vertigo is a type of dizziness, it causes by problem with nystagmus. Doctors can diagnosis this disease from observing the motion of inner eye. For Nystagmus diagnosis system, efficient and precise pupil extraction system is needed. This paper proposed a method of pupil extraction by using K-mean clustering and Mahalanobis distance. Image sequence is captured via infrared camera mounted on the binocular. Eye tracking algorithm is consisted of K-mean clustering and Mahalanobis Distance. Based on the darkness of pupil, K-means clustering algorithm is used to segment black pixels. Extracted region is pupil, however noise is occurred. The noisy data is eliminated by means of Mahalanobis distance technique. Then the pupil is extracted. For experimental result, 1869 frames from 9 image sequences are use to test the performance of the proposed method. Accuracy is 73.68%, precision is 3.18 pixels error.
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