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Semi- and weakly-supervised human pose estimation

机译:半监督和弱监督的人体姿势估计

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For human pose estimation in still images, this paper proposes three semi- and weakly-supervised learning schemes. While recent advances of convolutional neural networks improve human pose estimation using supervised training data, our focus is to explore the semi- and weakly-supervised schemes. Our proposed schemes initially learn conventional model(s) for pose estimation from a small amount of standard training images with human pose annotations. For the first semi-supervised learning scheme, this conventional pose model detects candidate poses in training images with no human annotation. From these candidate poses, only true-positives are selected by a classifier using a pose feature representing the configuration of all body parts. The accuracies of these candidate pose estimation and true-positive pose selection are improved by action labels provided to these images in our second and third learning schemes, which are semi- and weakly-supervised learning. While the first and second learning schemes select only poses that are similar to those in the supervised training data, the third scheme selects more true-positive poses that are significantly different from any supervised poses. This pose selection is achieved by pose clustering using outlier pose detection with Dirichlet process mixtures and the Bayes factor. The proposed schemes are validated with large-scale human pose datasets.
机译:对于静止图像中的人体姿势估计,本文提出了三种半监督和弱监督学习方案。尽管卷积神经网络的最新进展使用监督训练数据改善了人体姿势估计,但我们的重点是探索半监督和弱监督方案。我们提出的方案最初是从少量带有人体姿势注释的标准训练图像中学习用于姿势估计的常规模型。对于第一个半监督学习方案,此常规姿势模型无需人工注释即可检测训练图像中的候选姿势。分类器使用代表所有身体部位构造的姿势特征从这些候选姿势中仅选择真阳性。通过在第二和第三学习方案(这些是半监督和弱监督学习)中为这些图像提供的动作标签,可以提高这些候选姿态估计和真-正姿态选择的准确性。虽然第一和第二学习方案仅选择与监督训练数据中的姿势相似的姿势,但第三方案选择与任何监督姿势明显不同的更多真阳性姿势。该姿势选择是通过使用Dirichlet过程混合物和贝叶斯因子的异常姿势检测通过姿势聚类来实现的。所提出的方案已通过大规模人体姿态数据集验证。

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