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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part P. Journal of Sports Engineering and Technology >Estimating the projected frontal surface area of cyclists from images using a variational framework and statistical shape and appearance models
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Estimating the projected frontal surface area of cyclists from images using a variational framework and statistical shape and appearance models

机译:使用变分框架和统计形状和外观模型估算从图像的骑自行车者的投影前表面区域

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>We present a computer vision-based approach to estimating the projected frontal surface area (pFSA) of cyclists from unconstrained images. Wind tunnel studies show a reduction in cyclists’ aerodynamic drag through manipulation of the cyclist’s pose. Whilst the mechanism by which reduction is achieved remains unknown, it is widely accepted in the literature that the drag is proportional to the cyclist’s pFSA. This paper describes a repeatable automatic method for pFSA estimation for the study of its relationship with aerodynamic drag in cyclists. The proposed approach is based on finding object boundaries in images. An initialised curve dynamically evolves in the image to minimise an energy function designed to force the curve to gravitate towards image features. To overcome occlusions and pose variation, we use a statistical cyclist shape and appearance models as priors to encourage the evolving curve to arrive at the desired solution. Contour initialisation is achieved using a discriminative object detection method based on offline supervised learning that yields a cyclist classifier. Once an instance of a cyclist is detected in an image and segmented, the pFSA is calculated from the area of the final curve. Applied to two challenging datasets of cyclist images, for cyclist detection our method achieves precision scores of 1.0 and 0.96 and recall scores of 0.68 and 0.83 on the wind tunnel and cyclists-in-natura datasets, respectively. For cyclist segmentation, it achieves 0.88 and 0.92 scores for the mean dice similarity coefficient metric on the two datasets, respectively. We discuss the performance of our method under occlusion, orientation, and pose conditions. Our method successfully estimates pFSA of cyclists and opens new vistas for exploration of the relationship between pFSA and aerodynamic drag.
机译:我们介绍了一种基于计算机视觉的方法来估计来自无约束图像的骑自行车者的投影前表面区域(PFSA)。风洞研究表明,通过操纵骑自行车者的姿势,骑自行车者的空气动力学阻力。虽然减少的机制仍然是未知的,但在文献中被广泛接受,拖动与骑自行车的PFSA成比例。本文介绍了一种可重复的自动方法,用于研究其与骑自行车者空气动力学拖曳的关系的PFSA估计。所提出的方法是基于在图像中找到对象边界。初始化的曲线在图像中动态发展,以最小化设计用于迫使曲线倾向于图像特征的能量函数。为了克服闭塞和姿势变化,我们使用统计骑自行车者形状和外观模型作为前沿,以鼓励不断发展的曲线到达所需的解决方案。使用基于离线监督学习的辨别物体检测方法实现轮廓初始化,从而产生骑自行车的分类器。一旦在图像中检测到骑车者的实例并分段,就从最终曲线的区域计算了PFSA。适用于骑自行车的骑车人图像的两个具有挑战性的数据集,用于骑自行车的检测我们的方法可以分别实现1.0%和0.96的精度分数,并分别记下风洞和骑自行车者在-Natura数据集上0.68和0.83的得分。对于骑车人分段,它分别实现了两个数据集的平均骰子相似系数度量的0.88和0.92分数。我们讨论了我们在遮挡,定向和构成条件下的方法的表现。我们的方法成功地估计了骑自行车者的PFSA,并打开了新的Vistas,以探索PFSA和空气动力学阻力之间的关系。

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