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Real-time eye gaze direction classification using convolutional neural network

机译:基于卷积神经网络的实时视线方向分类

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Estimation eye gaze direction is useful in various human-computer interaction tasks. Knowledge of gaze direction can give valuable information regarding users point of attention. Certain patterns of eye movements known as eye accessing cues are reported to be related to the cognitive processes in the human brain. We propose a real-time framework for the classification of eye gaze direction and estimation of eye accessing cues. In the first stage, the algorithm detects faces using a modified version of the Viola-Jones algorithm. A rough eye region is obtained using geometric relations and facial landmarks. The eye region obtained is used in the subsequent stage to classify the eye gaze direction. A convolutional neural network is employed in this work for the classification of eye gaze direction. The proposed algorithm was tested on Eye Chimera database and found to outperform state of the art methods. The computational complexity of the algorithm is very less in the testing phase. The algorithm achieved an average frame rate of 24 fps in the desktop environment.
机译:估计视线方向在各种人机交互任务中很有用。注视方向的知识可以提供有关用户注意点的有价值的信息。据报道,被称为“眼睛进入线索”的某些眼动模式与人脑的认知过程有关。我们提出了一种实时框架,用于对视线方向的分类和对眼睛进入线索的估计。在第一阶段,该算法使用Viola-Jones算法的修改版来检测人脸。使用几何关系和脸部界标可以获得粗略的眼睛区域。所获得的眼睛区域在随后的阶段中用于对眼睛凝视方向进行分类。卷积神经网络在这项工作中用于眼睛注视方向的分类。该算法在Eye Chimera数据库上进行了测试,发现其性能优于最新方法。在测试阶段,该算法的计算复杂度非常低。该算法在桌面环境中实现了24 fps的平均帧速率。

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