In May 2021, the site runnersworld.com published that participation in ultra-distance races has increased by 1,676% in the last 23 years. Moreover, nearly 41% of those runners participate in more than one race per year. The development of wearable devices has undoubtedly contributed to motivating participants by providing performance measures in real-time. However, we believe there is room for improvement, particularly from the organizers point of view. This work aims to determine how the runners performance can be quantified and predicted by considering a non-invasive technique focusing on the ultra-running scenario. In this sense, participants are captured when they pass through a set of locations placed along the race track. Each footage is considered an input to an I3D ConvNet to extract the participant's running gait in our work. Furthermore, weather and illumination capture conditions or occlusions may affect these footages due to the race staff and other runners. To address this challenging task, we have tracked and codified the participant's running gait at some RPs and removed the context intending to ensure a runner-of-interest proper evaluation. The evaluation suggests that the features extracted by an I3D ConvNet provide enough information to estimate the participant's performance along the different race tracks.
翻译:2021年5月,网站“跑者世界.com”公布,过去23年,参加超远竞赛的人数增加了1,676%。此外,近41%的跑者每年参加超过一次比赛。开发可磨损装置无疑通过实时提供性能措施促进了参与者的积极性。然而,我们认为还有改进的余地,特别是组织者的观点。这项工作的目的是确定如何通过考虑非侵入性技术来量化和预测跑者的表现,重点是超运行情景。从这个意义上讲,参加者在经过沿赛道设置的一组地点时就被捕获。每个镜头都被视为对I3D ConvNet的投入,以吸引参与者在我们的作品中跑步。此外,天气和不洁的捕获条件或隔离可能影响到这些镜头,特别是从组织者的角度看。为了应对这一具有挑战性的任务,我们追踪并编纂了参与者在一些RPs的赛场上运行的图案,并删除了旨在确保对跑者进行适当评价的背景。评估表明,通过I3号赛事的进度图提供了足够的成绩。