Trajectories are fundamental in different skiing disciplines. Tools enabling the analysis of such curves can enhance the training activity and enrich the broadcasting contents. However, the solutions currently available are based on geo-localized sensors and surface models. In this short paper, we propose a video-based approach to reconstruct the sequence of points traversed by an athlete during its performance. Our prototype is constituted by a pipeline of deep learning-based algorithms to reconstruct the athlete's motion and to visualize it according to the camera perspective. This is achieved for different skiing disciplines in the wild without any camera calibration. We tested our solution on broadcast and smartphone-captured videos of alpine skiing and ski jumping professional competitions. The qualitative results achieved show the potential of our solution.
翻译:在不同的滑雪学科中,轨迹是基本的。有助于分析这种曲线的工具可以加强培训活动,丰富广播内容。但是,目前可用的解决办法是以地理定位传感器和表面模型为基础。在这个简短的论文中,我们提议以视频为基础的方法来重建运动员在表演期间穿越的分数序列。我们的原型是由一套深层次的基于学习的算法构成的,该算法用来重建运动员的动作,并根据相机的角度进行视觉化。这是在野生不同滑雪学科中实现的,没有照相机校准。我们在高山滑雪和滑雪专业比赛的广播和智能窃听视频上测试了我们的解决办法。所取得的质量结果显示了我们的解决办法的潜力。