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Leveraging deep learning with symbolic sequences for robust head poses estimation

机译:利用符号序列的深入学习,为鲁棒头姿势估计

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摘要

Abstract Head pose estimation is a challenging topic in computer vision with a large area of applications. There are a lot of methods which have been presented in the literature to undertake pose estimation so far. Even though the efficiency of these methods is acceptable, the sensitivity to external conditions is still being a big challenge. In this paper, we come up with a new model to overcome the problem of head poses estimation. First, the face images are converted into one-dimensional vectors as a time series using the Peano–Hilbert space-filling curve. Then, we convert these numerical series into symbolic sequences with adequate dimensionality reduction approaches. These sequences are then used as input of an encode–decoder neural network to learn and generate labels of the faces orientations. We have evaluated our model on several databases, and the experimental results have shown that the proposed method is very competitive compared to other well-known approaches.
机译:摘要头部姿势估计是计算机视觉中具有大面积应用的具有挑战性的话题。到目前为止,文献中有很多方法已经介绍过姿势估计。尽管这些方法的效率是可接受的,但对外部条件的敏感性仍然是一个很大的挑战。在本文中,我们提出了一个新模型来克服头部姿势的问题。首先,将面部图像转换成一维矢量作为使用PEANO-HILBERT空间填充曲线的时间序列。然后,我们将这些数值序列转换为具有足够的维度减少方法的象征性序列。然后将这些序列用作编码解码器神经网络的输入,以学习和生成面向方向的标签。我们在若干数据库中评估了我们的模型,实验结果表明,与其他众所周知的方法相比,该方法非常有竞争力。

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