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Eye gaze pattern analysis for fatigue detection based on GP-BCNN with ESM

机译:基于带有ESM的GP-BCNN的视线模式分析用于疲劳检测

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This paper presents a robust fatigue detection system based on binocular consistency, which integrates artificial modulation into deep learning to guide the learning process and removes the extreme cases of dynamic objects through screening mechanism. Specifically, we first build a dual-stream bidirectional convolutional neural network (BCNN) for eye gaze pattern detection, which uses binocular consistency for information interaction. Then we incorporate vectorized local integral projection features which named projection vectors and Gabor filters into BCNN to construct GP-BCNN that not only enhances the resistance of deep learned features to the orientation and scale changes, but strengthens the learning of texture information. Finally, an eye screening mechanism (ESM) based on pupil distance is proposed to eliminate the detected errors caused by the occluded eyes when the lateral face is detected. Demonstrated by introducing binocular consistency and artificial modulation to convolutional neural network (CNN), GP-BCNN improves the widely used CNNs architectures and yields a 2.9% promotion in the average accuracy rate compared with the results obtained by CNN alone. Our approach obtains the state-of-the-art results in fatigue detection and has the generalization potential in general image recognition tasks. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于双目一致性的鲁棒疲劳检测系统,该系统将人工调制集成到深度学习中以指导学习过程,并通过筛选机制消除了动态物体的极端情况。具体来说,我们首先建立一个双流双向卷积神经网络(BCNN)用于眼睛注视模式检测,它使用双目一致性进行信息交互。然后,我们将向量化的局部积分投影特征(称为投影向量和Gabor滤波器)并入BCNN中,以构建GP-BCNN,这不仅增强了深度学习特征对方向和尺度变化的抵抗力,而且还增强了纹理信息的学习。最后,提出了一种基于瞳孔距离的眼球筛查机制(ESM),以消除检测到侧面时检测到的由闭塞的眼睛引起的错误。通过将双目一致性和人工调制引入卷积神经网络(CNN)进行演示,GP-BCNN改进了广泛使用的CNN架构,与仅使用CNN的结果相比,其平均准确率提高了2.9%。我们的方法获得了疲劳检测的最新成果,并且在一般图像识别任务中具有推广潜力。 (C)2019 Elsevier B.V.保留所有权利。

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