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A new eye gaze detection algorithm using PCA features and recurrent neural networks

机译:一种新的眼睛凝视检测算法使用PCA特征和经常性神经网络

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The paper presents a new eye-gaze detection algorithm from low resolution images using Principal Component Analysis (PCA) and recurrent neural networks (RNN). First, eye images are extracted from human face images using Adaboost classifier and Haar-like features. A set of sample eye images captured under different lighting conditions is used to build an eigeneye space based on PCA. The coordinates of the sampled eye images in the eigeneye space are employed to train three-layer recurrent neural networks. Experimental results show that the trained neural networks can determine eye gaze direction with high accuracy and robustness to lighting conditions of the working environment.
机译:本文介绍了使用主成分分析(PCA)和经常性神经网络(RNN)的低分辨率图像的新眼睛凝视检测算法。 首先,使用Adaboost分类器和类似哈尔的特征从人脸图像中提取眼睛图像。 在不同的照明条件下捕获的一组样本眼睛图像用于基于PCA构建西生物烯空间。 采用Eigeneye空间中的采样眼图像的坐标用于培训三层复发性神经网络。 实验结果表明,训练有素的神经网络可以以高精度和鲁棒性来确定眼睛凝视方向,在工作环境的照明条件下。

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