Human Pose Estimation Using Deep Learning: A Systematic Literature Review

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-11-13 DOI:10.3390/make5040081
Esraa Samkari, Muhammad Arif, Manal Alghamdi, Mohammed A. Al Ghamdi
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Abstract

Human Pose Estimation (HPE) is the task that aims to predict the location of human joints from images and videos. This task is used in many applications, such as sports analysis and surveillance systems. Recently, several studies have embraced deep learning to enhance the performance of HPE tasks. However, building an efficient HPE model is difficult; many challenges, like crowded scenes and occlusion, must be handled. This paper followed a systematic procedure to review different HPE models comprehensively. About 100 articles published since 2014 on HPE using deep learning were selected using several selection criteria. Both image and video data types of methods were investigated. Furthermore, both single and multiple HPE methods were reviewed. In addition, the available datasets, different loss functions used in HPE, and pretrained feature extraction models were all covered. Our analysis revealed that Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) are the most used in HPE. Moreover, occlusion and crowd scenes remain the main problems affecting models’ performance. Therefore, the paper presented various solutions to address these issues. Finally, this paper highlighted the potential opportunities for future work in this task.
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使用深度学习的人体姿势估计:系统的文献综述
人体姿态估计(HPE)是一项旨在从图像和视频中预测人体关节位置的任务。这项任务用于许多应用程序,例如运动分析和监视系统。最近,一些研究已经采用深度学习来提高HPE任务的性能。然而,建立一个高效的HPE模型是困难的;许多挑战,如拥挤的场景和遮挡,必须处理。本文采用系统的程序对不同的HPE模型进行了全面的综述。自2014年以来,在HPE上发表的大约100篇使用深度学习的文章通过几个选择标准被选中。对图像和视频数据类型的方法进行了研究。此外,还对单一和多种HPE方法进行了综述。此外,还涵盖了可用的数据集、HPE中使用的不同损失函数以及预训练的特征提取模型。我们的分析表明,卷积神经网络(cnn)和循环神经网络(RNNs)在HPE中使用最多。此外,遮挡和人群场景仍然是影响模型性能的主要问题。因此,本文提出了解决这些问题的各种解决方案。最后,本文强调了该任务未来工作的潜在机会。
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CiteScore
6.30
自引率
0.00%
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0
审稿时长
7 weeks
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