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Improving Head Pose Estimation with a Combined Loss and Bounding Box Margin Adjustment

机译:用损耗和边界箱边距调整改善头部姿势估计

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We address a problem of estimating pose of a person's head from its RGB image. The employment of CNNs for the problem has contributed to significant improvement in accuracy in recent works. However, we show that the following two methods, despite their simplicity, can attain further improvement: (i) proper adjustment of the margin of bounding box of a detected face, and (ii) choice of loss functions. We show that the integration of these two methods achieve the new state-of-the-art on standard benchmark datasets for in-the-wild head pose estimation. The Tensorflow implementation of our work is available at https://github.com/MingzhenShao/HeadPose.
机译:我们解决了从其RGB图像估算一个人头部姿势的问题。对问题的CNN的就业有助于在近期工程中的准确性提高。但是,我们表明以下两种方法尽管他们简单起见,可以实现进一步的改进:(i)正确调整检测到的面部的边界框的余量,以及(ii)损耗功能的选择。我们表明这两种方法的集成在野外姿势估计中实现了新的最先进的标准基准数据集。我们的工作的TensoRFLOW实施是在https://github.com/mingzhenshao/emotops上获得的。

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