Abstract

Human pose estimation has broad application prospects in the fields of human behavior recognition and human-computer interaction. Although the current human pose estimation methods have made tremendous progress, the partial occlusion of human bodies still remains a challenging problem. In this paper, we address the challenging joints in human bodies by the hard joints mining technique. The proposed hard joints mining method is based on the generative adversarial network, which consists of two stacked hourglasses with a similar architecture: the generator and 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 induce generator generates a more reasonable prediction. Moreover, the hard joints mining technique is used to focus the training attention on the difficult joint points in the generator. Finally, the experimental results demonstrate the effectiveness of the proposed approach for human pose estimation on Leeds Sports Pose (LSP) Dataset, LSP-extended datasets and MPII Human Pose Datasets.

Highlights

  • MotivationHuman pose estimation is a hot research topic in the field of computer vision and has numerous important applications such as sports, action recognition, and human-computer interaction

  • To address the above-mentioned problems, we propose a novel method for human pose estimation with the generative adversarial network

  • This paper presents the hard joints mining in the hourglassbased generative adversarial network

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Summary

Motivation

Human pose estimation is a hot research topic in the field of computer vision and has numerous important applications such as sports, action recognition, and human-computer interaction. Following DeepPose, many researchers proposed a CNN-based model for the human pose estimation. Hourglass network is one of the most successful methods and has shown its powerful ability in the articulated human pose estimation.. Hourglass network is one of the most successful methods and has shown its powerful ability in the articulated human pose estimation.16–18 This network obtains feature information of different scales and uses the operation of upsampling for fusing feature information of different scales. Scitation.org/journal/adv provides the ability to obtain more context information, which greatly improves the prediction accuracy This model might predict human pose with implausible configuration due to severe occlusion or overlap. Employ generative adversarial networks to train stacked hourglass networks This strategy enables the networks to learn plausible human body configurations. To design a more effective generative adversarial learning method for human pose estimation is highly desirable

Related work
Challenges
Contribution
HARD JOINT MINING VIA HOURGLASS-BASED GENERATIVE ADVERSARIAL NETWORK
Discriminator
Hard joints mining in the hourglass-based generative adversarial network
Adversarial training
Datasets
Implementation detail
Diagnostic experiments
Results
CONCLUSION
Full Text
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