Intelligent Image Processing Technology for Badminton Robot under Machine Vision of Internet of Things

IF 0.9 4区 计算机科学 Q4 ROBOTICS International Journal of Humanoid Robotics Pub Date : 2022-11-21 DOI:10.1142/s0219843622500189
Haishan Ye
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Abstract

The present work aims to promote the development of intelligent image processing technology for badminton robots and optimize the application effect of badminton robots in national fitness. Firstly, the problems and common needs of the badminton robot currently in use are investigated. Secondly, a shuttlecock aerodynamic model is established to simulate the effects of air resistance and gravity on the aerial flight of shuttlecock. Besides, the convolution neural network (CNN) is combined with traditional image processing technology to denoise and recognize the collected shuttlecock images. Finally, the badminton robot vision system is constructed and its performance is tested. The results demonstrate that the image denoising method based on CNN and the traditional image processing method can effectively process and denoise the captured moving image. Under the noise level of [Formula: see text], the peak signal-to-noise ratio index of this method is better than the Gaussian Scale Model, k-Singular Value Decomposition, and Color Names methods, slightly better than that of the Multilayer Perceptron (MLP) network. In terms of the time consumed in processing the same number of pictures, the method reported here takes the least time. But when [Formula: see text], the MLP method has a better denoising effect because the noise is overlarge and the features are not easy to learn. Moreover, the detection accuracy of the optimized Single Shot MultiBox Detector (SSD) method adopted here is 79.0%. This accuracy is 1.7% higher than that of the traditional SSD method, and 2.3% higher than that of Faster Region-Convolutional Neural Network based on Region Proposal Network. The optimized network structure reported here provides a certain idea for the software design of the badminton robot.
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物联网机器视觉下羽毛球机器人智能图像处理技术
本工作旨在促进羽毛球机器人智能图像处理技术的发展,优化羽毛球机器人在全民健身中的应用效果。首先,对目前使用的羽毛球机器人存在的问题和共性需求进行了研究。其次,建立了羽毛球的空气动力学模型,模拟了空气阻力和重力对羽毛球空中飞行的影响。此外,将卷积神经网络(CNN)与传统图像处理技术相结合,对采集到的羽毛球图像进行去噪和识别。最后,构建了羽毛球机器人视觉系统,并对其性能进行了测试。结果表明,基于CNN的图像去噪方法和传统的图像处理方法可以有效地对捕获的运动图像进行处理和去噪。在[公式:见文]的噪声水平下,该方法的峰值信噪比指标优于高斯比例模型、k-奇异值分解和颜色名称方法,略优于多层感知器(Multilayer Perceptron, MLP)网络。就处理相同数量的图片所消耗的时间而言,本文报告的方法花费的时间最少。但当[公式:见文]时,由于噪声过大,特征不易学习,MLP方法去噪效果较好。优化后的单次多盒探测器(SSD)检测精度为79.0%。该准确率比传统SSD方法提高1.7%,比基于区域建议网络的Faster Region- convolutional Neural Network方法提高2.3%。本文所报道的优化网络结构为羽毛球机器人的软件设计提供了一定的思路。
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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来源期刊
International Journal of Humanoid Robotics
International Journal of Humanoid Robotics 工程技术-机器人学
CiteScore
3.50
自引率
13.30%
发文量
29
审稿时长
6 months
期刊介绍: The International Journal of Humanoid Robotics (IJHR) covers all subjects on the mind and body of humanoid robots. It is dedicated to advancing new theories, new techniques, and new implementations contributing to the successful achievement of future robots which not only imitate human beings, but also serve human beings. While IJHR encourages the contribution of original papers which are solidly grounded on proven theories or experimental procedures, the journal also encourages the contribution of innovative papers which venture into the new, frontier areas in robotics. Such papers need not necessarily demonstrate, in the early stages of research and development, the full potential of new findings on a physical or virtual robot. IJHR welcomes original papers in the following categories: Research papers, which disseminate scientific findings contributing to solving technical issues underlying the development of humanoid robots, or biologically-inspired robots, having multiple functionality related to either physical capabilities (i.e. motion) or mental capabilities (i.e. intelligence) Review articles, which describe, in non-technical terms, the latest in basic theories, principles, and algorithmic solutions Short articles (e.g. feature articles and dialogues), which discuss the latest significant achievements and the future trends in robotics R&D Papers on curriculum development in humanoid robot education Book reviews.
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