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Occluded Appearance Modeling with Sample Weighting for Human Pose Estimation

机译:用于人体姿势估计的具有样本加权的闭塞外观建模

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This paper proposes a method for human pose estimation in still images. The proposed method achieves occlusion-aware appearance modeling. Appearance modeling with less accurate appearance data is problematic because it adversely affects the entire training process. The proposed method evaluates the effectiveness of mitigating the influence of occluded body parts in training sample images. In order to improve occlusion evaluation by a discriminatively-trained model, occlusion images are synthesized and employed with non-occlusion images for discriminative modeling. The score of this discriminative model is used for weighting each sample in the training process. Experimental results demonstrate that our approach improves the performance of human pose estimation in contrast to base models.
机译:提出了一种静止图像中人体姿态估计的方法。所提出的方法实现了遮挡感知外观模型。使用不太准确的外观数据进行外观建模是有问题的,因为它会对整个训练过程产生不利影响。所提出的方法评估了在训练样本图像中减轻被遮挡的身体部位的影响的有效性。为了通过判别训练的模型改善遮挡评估,将遮挡图像合成并与非遮挡图像一起用于判别建模。此判别模型的分数用于在训练过程中对每个样本进行加权。实验结果表明,与基本模型相比,我们的方法提高了人体姿势估计的性能。

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