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Objects detection toward complicated high remote basketball sports by leveraging deep CNN architecture

机译:通过利用深层CNN架构来检测复杂的高远程篮球运动

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摘要

The analysis of high-difficulty action recognition technology in basketball is mainly to identify and analyze the physical behavior of basketball players in the video to complete the technical action. The purpose of video recognition is to provide an important guarantee for improving the level of basketball training. The current target recognition technology has achieved some results. It shows that the application of target detection technology in basketball sports scene is of great significance and can improve the effect of sports training. However, traditional sports target recognition is limited by technology and injury, and the analysis of difficult sports skills is limited by the scene, dynamic background and technology, and cannot achieve the desired effect. This is not conducive to the improvement of athletes' skills. Therefore, this article aims to develop a big data motion target detection system based on deep convolutional neural network for sports difficult motion image recognition. More specifically, we use the high discriminative power of the convolutional neural network to extract images to perform computational preprocessing for the recognition of each human motion image in the video stream. Then, the skeleton recognition algorithm based on LSTM is used to detect the key points of the human body, which is of great significance for modeling different movements. Finally, we developed an object detection system to reconstruct each movement. By selecting five groups of highly difficult actions that are likely to cause sports injuries to conduct experimental research, the results prove the effectiveness of the target detection system we proposed.
机译:篮球高难度动作识别技术分析主要是识别和分析视频中篮球运动员的物理行为来完成技术行动。视频识别的目的是提供改善篮球训练水平的重要保证。目前的目标识别技术取得了一些结果。它表明,目标检测技术在篮球运动场景中的应用具有重要意义,可以提高体育培训的影响。然而,传统的体育目标识别受到技术和伤害的限制,难以分析困难的体育技能受到现场,动态背景和技术的限制,无法达到预期的效果。这不利于改善运动员技能。因此,本文旨在基于基于深度卷积神经网络进行体育困难运动图像识别的大数据运动目标检测系统。更具体地,我们使用卷积神经网络的高鉴别力来提取图像以执行计算预处理以识别视频流中的每个人类运动图像。然后,基于LSTM的骨架识别算法用于检测人体的关键点,这对于建模不同的运动具有重要意义。最后,我们开发了一个对象检测系统来重建每个运动。通过选择可能导致运动损伤进行实验研究的五组高度困难的行动,结果证明了我们提出的目标检测系统的有效性。

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