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Head Pose Estimation using Transfer Learning

机译:使用转移学习的头部姿势估计

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摘要

Head Pose Estimation is one of the most sought after problems in Computer Vision, as it is used in many realtime applications such as Advanced Driver Assistance System, Augmented Reality and many other Artificial Intelligence applications. But most of the existing systems are trained for controlled environment applications. They are not robust enough to apply them in real-time critical systems. We present a robust Head Pose Estimation System using convolution neural network augmented by transfer learning algorithm, which enables the system to adjust with the wild environment. Transfer learning approach also avoids the system from over-fitting and it also enables the model to be retrained for its respective application, in a fraction of time as compared to the time required to train an existing CNN model.
机译:头姿势估计是计算机视觉中最受欢迎的问题之一,因为它已用于许多实时应用程序中,例如高级驾驶员辅助系统,增强现实和许多其他人工智能应用程序。但是大多数现有系统都经过了受控环境应用程序的培训。它们不够强大,无法将它们应用在实时关键系统中。我们提出了一种使用卷积神经网络并通过转移学习算法进行增强的鲁棒的头部姿势估计系统,该系统使系统能够适应野外环境。与学习现有CNN模型所需的时间相比,转移学习方法还避免了系统的过度拟合,并且还使模型能够针对其各自的应用进行重新训练。

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