Vitor Tessutti, A. A. R. Diniz, Leonardo Signorini, Heliana Bezerra Soares, Milena C. Vidotto, Liu Chiao Yi
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引用次数: 0
摘要
人类通过感官渠道与环境互动。虽然视觉是主要的感觉通道,但听觉通道经过训练后也非常适合学习。使用 Flexinfit 阻力鞋垫收集了 43 名休闲跑步者的足底压力峰值数据。参与者穿着 Run Falcon 1.0(阿迪达斯)跑鞋,被分为四组:无痛;脊柱或臀部疼痛;大腿或膝盖疼痛;腿部、脚踝或脚部疼痛。参与者回答是否出现疼痛以及疼痛是否与跑步(训练或比赛)有关。我们使用 TwoTone 软件收集超声波数据。我们使用第一个八度的 C 音,根据压力大小将数字数据转换成声音。使用 Audacity 软件将声音文件分解成频谱图,图中显示了主要的频率成分及其振幅。频谱显示,在没有疼痛的跑步者中,某些频率的声音强度更大。频谱还显示,在特定频率下,各组之间产生的声音强度存在差异。
Sonification of plantar pressure in runners with and without pain after running practice
Humans interact with the environment using sensory channels. Although vision is the main sensory channel, the auditory channel is excellent for learning when trained. Movement learning via auditory inputs requires sound analysis, such as sonification.Data on peak plantar pressure from 43 recreational runners were collected using Flexinfit resistive insoles. Participants wore Run Falcon 1.0 (Adidas) running shoes and were categorised into four groups: without pain; spine or hip pain; thigh or knee pain; and leg, ankle, or foot pain. Participants responded to whether they presented pain and whether it was related to running (training or races). Sonification data were collected using the TwoTone software. We used the C note in the first octave to transform numerical data into sounds according to the pressure magnitude. The sound file was decomposed using the Audacity software into a spectrogram illustrating the main frequency components and their amplitudes.The spectrogram made it possible to identify qualitative differences between the runners with and without pain after running. The frequency spectrum showed that some frequencies had greater sound intensity in runners without pain.Our results indicated differences between runners with and without pain after running using sonification. The frequency spectrum also indicated a difference in the sound intensity produced between the groups at specific frequencies.