Pupil localization by ASM and regional gray distribution

Xianmei Wang, Ping Yang, Xiujie Zhao, Liying Jia
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Abstract

This paper presents a new approach for pupil localization. The whole system can be divided into two stages: eyes detection and pupil localization. In the first stage, ASM method is used to locate the facial feature points, in which Adaboost algorithm is used to detect human face and provide the original searching position. In the second stage, gray distribution of the eyes is analyzed. The local area with lowest gray intensity is assumed the candidate of pupil. Finally, similar local area analysis technique is employed to adjust the position of the candidate pupil area. Experimental results validate the effects of our approach.
瞳孔定位与区域灰度分布
本文提出了一种瞳孔定位的新方法。整个系统可分为两个阶段:眼睛检测和瞳孔定位。第一阶段使用ASM方法定位人脸特征点,其中使用Adaboost算法检测人脸并提供原始搜索位置。第二阶段,分析眼睛的灰度分布。将灰度值最低的局部区域作为瞳孔的候选区域。最后,采用相似局部区域分析技术对候选瞳孔区域进行位置调整。实验结果验证了该方法的有效性。
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