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A survey on monocular 3D human pose estimation

Xiaopeng Ji, Qi Fang, Junting Dong, Qing Shuai, Wen Jiang, Xiaowei Zhou

Year
2020
Citations
52

Abstract

Recovering human pose from RGB images and videos has drawn increasing attention in recent years owing to minimum sensor requirements and applicability in diverse fields such as human-computer interaction, robotics, video analytics, and augmented reality. Although a large amount of work has been devoted to this field, 3D human pose estimation based on monocular images or videos remains a very challenging task due to a variety of difficulties such as depth ambiguities, occlusion, background clutters, and lack of training data. In this survey, we summarize recent advances in monocular 3D human pose estimation. We provide a general taxonomy to cover existing approaches and analyze their capabilities and limitations. We also present a summary of extensively used datasets and metrics, and provide a quantitative comparison of some representative methods. Finally, we conclude with a discussion on realistic challenges and open problems for future research directions.

Keywords

PoseArtificial intelligenceComputer scienceMonocularAugmented realityComputer visionRobotics3D pose estimationTask (project management)Field (mathematics)

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