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首页> 外文期刊>Journal of Biomechanics >A learning-based markerless approach for full-body kinematics estimation in-natura from a single image
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A learning-based markerless approach for full-body kinematics estimation in-natura from a single image

机译:一种基于学习的无标记方法,用于单一图像中Natura中的Natura估算

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We present a supervised machine learning approach for markerless estimation of human full-body kinematics for a cyclist from an unconstrained colour image. This approach is motivated by the limitations of existing marker-based approaches restricted by infrastructure, environmental conditions, and obtrusive markers. By using a discriminatively learned mixture-of-parts model, we construct a probabilistic tree representation to model the configuration and appearance of human body joints. During the learning stage, a Structured Support Vector Machine (SSVM) learns body parts appearance and spatial relations. In the testing stage, the learned models are employed to recover body pose via searching in a test image over a pyramid structure. We focus on the movement modality of cycling to demonstrate the efficacy of our approach. In natura estimation of cycling kinematics using images is challenging because of human interaction with a bicycle causing frequent occlusions. We make no assumptions in relation to the kinematic constraints of the model, nor the appearance of the scene. Our technique finds multiple quality hypotheses for the pose. We evaluate the precision of our method on two new datasets using loss functions. Our method achieves a score of 91.1 and 69.3 on mean Probability of Correct Keypoint (PCK) measure and 88.7 and 66.1 on the Average Precision of Keypoints (APK) measure for the frontal and sagittal datasets respectively. We conclude that our method opens new vistas to robust user-interaction free estimation of full body kinematics, a prerequisite to motion analysis. (C) 2017 Elsevier Ltd. All rights reserved.
机译:我们提出了一种监督机器学习方法,用于从未约束彩色图像的骑自行车者人类全身运动学无价值估计。这种方法是由基础设施,环境条件和突兀标记限制的现有标记的方法的局限性。通过使用歧义地学习的零件模型,我们构建概率树表示以模拟人体关节的配置和外观。在学习阶段,结构化支持向量机(SSVM)学习身体部位外观和空间关系。在测试阶段,学习模型用于通过金字塔结构在测试图像中搜索恢复身体姿势。我们专注于骑自行车的运动方式,以证明我们的方法的功效。在Natura估计使用图像的循环运动学的估计是具有挑战性的,因为与频繁闭塞的自行车的人类相互作用是具有挑战性的。我们没有与模型的运动限制相关的假设,也不是场景的外观。我们的技术为姿势找到了多种质量假设。我们使用损耗函数评估我们对两个新数据集的方法的精度。我们的方法达到了91.1和69.3的分数分别对额外和矢状数据集的关键点(APK)测量的平均精度的平均概率。我们得出结论,我们的方法开启了新的Vistas,以强大的用户交互免费估计全身运动学,运动分析的先决条件。 (c)2017 Elsevier Ltd.保留所有权利。

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