Feature Extraction Method of Snowboard Starting Action Using Vision Sensor Image Processing

Tao Zhang, Zhipeng Li, Myung-Cheul Shin, Chunxia Wang, Wenli Song, Lei Lui
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Abstract

There is a lot of noise in the snowboard starting action image, which leads to the low accuracy of snowboard starting action feature extraction. We propose a snowboard starting action feature extraction using visual sensor image processing. Firstly, the overlapping images are separated by laser fringe technology. After separation, the middle point of the image is taken as the feature point, and the interference factors are filtered by laser. Secondly, the three-dimensional model is established by using visual sensing image technology, the action feature images are input in the order of recognition, and all actions are reconstructed and assembled to complete the action feature extraction of snowboard. The interference factors are filtered by laser, the middle part of the action image is extracted according to the common features of multiple images, and its definition is described. The movement change and moving distance are used to count the most features and clarity. Finally, the edge recognition effect of snowboard starting action image and the action recognition effect under multiple complex images are taken as experimental indexes. The results show that the method has a good effect on image edge extraction, the extraction effect is as high as 95%, and the accuracy is as high as 2.1%. In addition, under multiple complex images, the action feature recognition rate is also high, which can prove that the method studied has better accuracy in snowboard starting action feature extraction.
基于视觉传感器图像处理的滑雪板起动动作特征提取方法
滑雪板起动动作图像中存在大量噪声,导致滑雪板起动动作特征提取精度较低。提出了一种基于视觉传感器图像处理的滑雪板起动动作特征提取方法。首先,采用激光条纹技术对重叠图像进行分离;分离后,取图像中点作为特征点,用激光滤波干扰因素。其次,利用视觉传感图像技术建立三维模型,按识别顺序输入动作特征图像,并对所有动作进行重构组装,完成单板动作特征提取;用激光滤波干扰因素,根据多幅图像的共同特征提取动作图像的中间部分,并对其定义进行描述。移动变化和移动距离被用来计算最特征和清晰度。最后,以滑雪板起动动作图像的边缘识别效果和多幅复杂图像下的动作识别效果作为实验指标。结果表明,该方法对图像边缘提取效果良好,提取效果高达95%,准确率高达2.1%。此外,在多个复杂图像下,动作特征识别率也很高,这可以证明所研究的方法在滑雪板起动动作特征提取方面具有较好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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