Identify Cricket Shots using Machine Learning

Prof. Bhakti Puranik, Swayam Nikam, Piyush Sandhan, Vedant Sadgir, Avishkar Jadhav
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Abstract

Cricket shot detection is a game-changing technology that offers deep insights into player performance and match data, completely changing the way the sport is played. The main elements and importance of cricket shot detection systems are explored in this abstract. Using computer vision and machine learning techniques, the system examines video footage of cricket matches to accurately detect and classify every shot made by batsmen. Shot types (such as cover drive, pull, or leg glance), shot trajectories, and success rates are among the important data it retrieves. Numerous stakeholders in the cricketing ecosystem find diverse uses for cricket shot detection. It provides coaches and professional athletes with an unmatched post-match analysis tool that helps with strategic planning and performance enhancement.The method is used by team analysts to create winning strategies by gaining insight into opponents' shot patterns. Shot detection provides compelling visualizations and real-time shot labels in the broadcasting domain, enhancing the viewing experience. While talent scouts and cricket organizations use technology to find players and nurture talent, cricket enthusiasts profit from comprehensive shot data. This abstract highlight cricket shot detection's potential and adaptability, highlighting how it can revolutionize the cricket industry. Technology keeps improving the game, empowering players, and enthralling spectators with a deeper comprehension of the sport. Several sports have received a lot of attention and popularity recently. Many people were pining for live sports action during the height of the recent outbreak because there were no sporting activities. With millions of devoted fans who watch the games with emotion, cricket is one of the most respected sports in India. Enticed by the game, fans frequently conduct in-depth evaluations of certain players, focusing on their skills and shot choices. A greater number of people are interested in assessing players' performances in order to make wise choices for fantasy teams, especially in light of the popularity of fantasy leagues and related services. Automation presents a potential solution to the significantly time-consuming and manual process of detecting cricket batters' shots. In order to accomplish its goals, this study uses deep learning in the form of Convolutional Neural Networks (CNNs) to present an efficient method for evaluating cricket strokes
使用机器学习识别板球射门
板球击球检测是一项改变游戏规则的技术,可深入洞察球员表现和比赛数据,彻底改变这项运动的比赛方式。本摘要探讨了板球击球检测系统的主要要素和重要性。该系统利用计算机视觉和机器学习技术,检查板球比赛的视频录像,对击球手的每次击球进行准确检测和分类。系统检索到的重要数据包括击球类型(如盖球、拉球或扫腿)、击球轨迹和成功率。板球生态系统中的众多利益相关者发现板球击球检测有多种用途。它为教练和专业运动员提供了无与伦比的赛后分析工具,有助于制定战略计划和提高成绩。球队分析师可利用这种方法深入了解对手的击球模式,从而制定制胜战略。射门检测在广播领域提供了引人注目的可视化和实时射门标签,增强了观看体验。球探和板球组织利用技术发现球员并培养人才,而板球爱好者则从全面的射门数据中获益。本摘要突出了板球击球检测的潜力和适应性,强调了它如何能彻底改变板球行业。技术不断改进比赛,增强球员的能力,让观众更深入地了解这项运动。最近,一些体育运动受到了广泛关注和欢迎。在最近的疫情高峰期,许多人都渴望现场体育活动,因为没有体育活动。板球在印度拥有数以百万计的忠实粉丝,他们怀着激动的心情观看比赛,是最受人尊敬的运动之一。球迷们被比赛所吸引,经常对某些球员进行深入评估,重点关注他们的技能和击球选择。更多的人有兴趣评估球员的表现,以便为梦幻球队做出明智的选择,尤其是在梦幻联赛和相关服务大行其道的情况下。检测板球击球手的击球情况非常耗时且需要人工操作,而自动化技术为这一过程提供了潜在的解决方案。为了实现目标,本研究采用卷积神经网络(CNN)形式的深度学习,提出了一种评估板球击球的高效方法。
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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