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Eye feature points detection by CNN with strict geometric constraint

机译:CNN的眼睛特征点检测具有严格的几何约束

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The detection accuracy of facial landmarks or eye feature points is influenced by geometric constraint between the points. However, this constraint is far from being research in existing convolutional neural network (CNN) based points detection. Whether strict geometric constraint can improve the performance is not studied yet. In this paper, we propose a new approach to estimate the eye feature points by using single CNN. A deep network containing three convolutional layers is built for points detection. To analyze the influence of geometric constraint on CNN based points detection, three definitions of the eye feature points are proposed and used for calibration. The experiments show that excellent performance is achieved by our method, which prove the importance of the strict geometric constraint in points detection based on CNN. In addition, the proposed method achieves high accuracy of 96.0% at 5% detection error, but need less computing time than the cascade structure.
机译:面部标志或眼睛特征点的检测精度受这些点之间的几何约束的影响。然而,在现有的基于卷积神经网络(CNN)的点检测中,这一约束还远远没有得到研究。尚未研究严格的几何约束是否可以提高性能。在本文中,我们提出了一种使用单个CNN估计眼睛特征点的新方法。建立包含三个卷积层的深度网络以进行点检测。为了分析几何约束对基于CNN的点检测的影响,提出了三种眼部特征点定义并将其用于校准。实验表明,该方法取得了良好的性能,证明了严格的几何约束在基于CNN的点检测中的重要性。此外,该方法在检测误差为5%时可达到96.0%的高精度,但所需的计算时间少于级联结构。

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