基于网络摄像头的眼中心精确定位

Hossain Mahbub Elahi, Didar Islam, Imtiaz Ahmed, Syoji Kobashi, Md Atiqur Rahman Ahad
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引用次数: 8

摘要

本文介绍了针对低功耗设备的基于网络摄像头的眼动仪的实验过程。本文包括五个过程。首先是降低平均处理要求的背景抑制。二是基于haar级联特征的人脸检测算法。三是几何眼位测定。第四部分是利用梯度向量均值检测和跟踪眼球中心。第五步也是最后一步是检测用户在看什么。我们只需计算眼球运动的百分比来检测它向左、向右、向上或向下看。该方法非常有效,精度令人满意。它还需要更少的处理能力。
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Webcam-Based Accurate Eye-Central Localization
This paper contains experimental procedure of webcam-based eye-tracker specially for low power devices. This paper consists of five processes. First one is background suppression for reducing average processing requirement. Second one is Haar-cascade feature-based face detection algorithm. Third one is geometrically eye-position determination. The fourth part is to detect and track eye-ball center using mean of gradient vector. The fifth and last step is to detect where the user looking. We simply calculate percentage of movement of eye to detect either it looking left, right, up or down. This procedure is highly effective with satisfactory accuracy. It also requires less processing power.
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