利用神经网络从回转滑雪的音频记录中自动识别门到门的时间

F. Menhorn, Chris Hummel, Andreas Huber, Karlheinz Waibel, H. Bungartz, Peter Spitzenpfeil
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引用次数: 0

摘要

我们介绍了一种从录音自动计算门到门时间的新方法。在激流回旋滑雪中,门到门计时对于运动员和教练员来说是一个非常有价值的指标,它可以捕捉到激流回旋门之间的时间间隔。每次滑行后立即进行测量,可获得及时反馈。虽然现有的测量门到门时间的方法在可行性、准确性和符合性方面各不相同,但我们提出了一种解决方案,利用卷积神经网络 (CNN) 通过门接触时产生的音频信号来预测门的位置。我们对 CNN 的预测结果和惯性测量单元获得的数据进行了对比分析。我们的研究结果表明,这两种方法之间具有很强的预测相关性,R 平方值为 0.94,均方根误差为 0.036。大多数预测结果显示出很高的准确性,误差在千分之一秒以内。然而,少数异常值对整体性能产生了负面影响。最后,我们深入探讨了与我们的方法相关的挑战和局限性,并进行了全面的讨论。最后,我们概述了未来研究的潜在途径,并将我们的方法扩展到回转滑雪领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic gate-to-gate time recognition from audio recordings in slalom skiing using neural networks
We introduce a novel approach for computing gate-to-gate time automatically from audio recordings. In slalom skiing, gate-to-gate timing is a valuable metric for athletes and trainers, capturing the time elapsed between slalom gates. The availability of these measurements immediately after each run allows for prompt feedback. This study specifically concentrates on gate-to-gate timing in alpine slalom skating, serving as a foundational step towards its future application in slalom skiing. While existing methods for measuring gate-to-gate time vary in their feasibility, accuracy, and compliance with regulations, we propose a solution utilizing a convolutional neural network (CNN) to predict gate locations using the audio signals generated upon gate contact. By leveraging these predictions, we achieve fully automated computation of gate-to-gate timings. We conduct a comparative analysis between the CNN’s predictions and data obtained from an inertial measurement unit. Our findings reveal a strong predictive correlation between the two methods, with an R-squared value of 0.94 and a root mean squared error of 0.036. The majority of predictions demonstrate high accuracy, falling within a range of thousandths of a second. However, a few outliers negatively impact the overall performance. Notably, we observe no deterioration in predictive quality based on the distance between the camera and the gate. Finally, we delve into the challenges and limitations associated with our approach and provide a comprehensive discussion. To conclude, we outline potential avenues for future research and extensions of our methodology to the realm of slalom skiing.
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