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Hardmining Training Via Self-Adversarial Network for Human Pose Estimation

机译:通过自助式网络进行人体姿势估计的强化训练

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Human pose estimation, as a branch of machine vision, has broad application prospects in the fields of behavior recognition, human-computer interaction and so on. Although the current human pose estimation method has made good progress, there is still room for improvement in the prediction of difficult joint points. In this paper, the hardmining training technique is proposed to improve this problem. We use self-adversarial network as our training model, which consists of two stacked hourglasses with the same architecture, one as the generator and the other as the discriminator. During the training period, the discriminator distinguishes the generated heatmaps from the ground-truth heatmaps, and introduces the adversarial loss to the generator through back-propagation to induced generator generates more reasonable prediction, on this basis, we introduce a method called hardmining to focus the training attention on the difficult joint points, thus improving the prediction accuracy on difficult joint points. After the training is done, the generator is used as a human pose estimator.
机译:人体姿态估计作为机器视觉的一个分支,在行为识别,人机交互等领域具有广阔的应用前景。尽管当前的人体姿势估计方法已经取得了良好的进展,但是在困难的关节点的预测方面仍有改进的空间。为了解决这个问题,本文提出了强化训练技术。我们使用自我对抗网络作为训练模型,该模型由两个具有相同架构的堆叠沙漏组成,一个是生成器,另一个是鉴别器。在训练期间,鉴别器将生成的热图与地热图区分开来,并通过反向传播将生成器的对抗损失引入生成器,以使生成器生成更合理的预测,在此基础上,我们引入了一种称为集中挖掘的方法训练注意难点,提高了难点的预测精度。训练完成后,将生成器用作人体姿势估计器。

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