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Maximizing Height Distance or Rotation from Real-Time Analysis Visualisation of Take-Off Angles and Speed

机译:通过起飞角度和速度的实时分析可视化最大化高度距离或旋转

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摘要

Studies to optimise take off angles for height or distance have usually involved either a time-consuming invasive approach of placing markers on the body in a laboratory setting or using even less efficient manual frame-by-frame joint angle calculations with one of the many sport science video analysis software tools available. This research introduces a computer-vision based, marker-free, real-time biomechanical analysis approach to optimise take-off angles based on speed, base of support and dynamically calculated joint angles and mass of body segments. The goal of a jump is usually for height, distance or rotation with consequent dependencies on speed and phase of joint angles, centre of mass COM) and base of support. First and second derivatives of joint angles and body part COMs are derived from a Continuous Human Movement Recognition (CHMR) system for kinematical and what-if calculations. Motion is automatically segmented using hierarchical Hidden Markov Models and 3D tracking is further stabilized by estimating the joint angles for the next frame using a forward smoothing Particle filter. The results from a study of jumps, leaps and summersaults supporting regular knowledge of results feedback during training sessions indicate that this approach is useful for optimising the height, distance or rotation of skills.Key Points class="unordered" style="list-style-type:disc">Computer-vision based marker-free tracking.Real-time biomechanical analysis.Improve tracking using a forward smoothing Particle filter.Automatically segment using hierarchical Hidden Markov Models.Recognize skills using segmented motion.Optimize take-off angles using speed, base of support, joint angles and mass of body segments.Optimize height, distance or rotation of skills.
机译:为优化高度或距离的起飞角度而进行的研究通常涉及到一种耗时的侵入性方法,即在实验室环境中将标记物放置在人体上,或者使用效率较低的手动逐帧关节角度计算来进行多种运动之一科学视频分析软件工具可用。这项研究引入了一种基于计算机视觉的,无标记的实时生物力学分析方法,可以根据速度,支撑基础以及动态计算的关节角度和身体节段质量来优化起飞角度。跳跃的目标通常是针对高度,距离或旋转,其结果取决于关节角度的速度和相位,质心(COM)和支撑基础。关节角度和身体部位COM的一阶和二阶导数来自连续人体运动识别(CHMR)系统,用于运动学和假设分析。使用分层的隐马尔可夫模型自动分割运动,并通过使用前向平滑的粒子过滤器估算下一帧的关节角度来进一步稳定3D跟踪。一项对跳跃,跳跃和夏季突击的研究结果支持了训练过程中对结果反馈的常规知识,表明该方法对于优化技能的身高,距离或旋转很有用。关键点 class =“ unordered” style =“ list -style-type:disc“> <!-list-behavior =无序前缀-word = mark-type = disc max-label-size = 0-> 基于计算机视觉的无标记跟踪。 实时生物力学分析。 使用前向平滑粒子滤波器改善跟踪。 使用分层隐马尔可夫模型自动分段。 识别 使用速度,支撑基础,关节角度和身体各部分的质量来优化起飞角度。 优化技能的高度,距离或旋转。 li>

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