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WC2FEst-Net: Wavelet-Based Coarse-to-Fine Head Pose Estimation from a Single Image

机译:WC2FEST-net:基于小波的粗致细头从单个图像姿态估计

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This paper proposes a novel head pose estimation scheme that is based on image and wavelets input and conducts a coarse to fine regression. As wavelets provide low-level shape abstractions, we add them as extra channels to the input to help the neural network to make better estimation and converge. We design a coarse-to-fine regression framework that makes coarse-grained head pose classification followed by fine-grained angles estimation. This framework helps alleviate the influence of biased training sample distribution, and combines segment-wise mappings to form a better global fitting. Further, multiple streams are used in the neural network to extract a rich feature set for robust and accurate regression. Experiments show that the proposed method outperforms the state-of-the-art methods of the same type for the head pose estimation task.
机译:本文提出了一种基于图像和小波输入的新型头部姿势估计方案,并对精细回归进行粗糙。由于小波提供低级形状抽象,我们将其作为输入的额外通道添加,以帮助神经网络更好地估计和收敛。我们设计了一种粗糙的回归框架,使粗粒头姿势分类随后进行细粒度的角度估计。该框架有助于缓解偏见培训样品分布的影响,并结合了分部明智的映射以形成更好的全球拟合。此外,神经网络中使用多个流以提取用于鲁棒和准确回归的丰富功能集。实验表明,该方法优于头部姿势估计任务的相同类型的最先进方法。

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