Improving Badminton Player Detection Using YOLOv3 with Different Training Heuristic

Q3 Decision Sciences
Muhammad Abdul Haq, N. Tagawa
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Abstract

There has been a considerable rise in the amount of research and development focused on computer vision over the previous two decades. One of the most critical processes in computer vision is "visual tracking," which involves following objects with a camera. Tracking objects is the practice of following an individual moving object or group of moving things over time. Identifying or connecting target elements in consecutive video frames of a badminton match requires visual object tracking. The aim of this study is to identify badminton players using the You Only Look Once (YOLO) technique in conjunction with a variety of training heuristics. This methodology has a few advantages over other approaches to detecting objects. The convolutional neural network and Fast convolutional neural network are two examples of the many algorithmic approaches that are available. In this study, a neural network is used to produce predictions about the bounding boxes and the class probabilities for these boxes.. The results demonstrated that it was far faster than other methods in terms of its ability to recognize the image. The performance of image classification networks significantly improved as a result of the implementation of a variety of training strategies for the detection of objects. The mean average precision score for YOLOv3 with various training heuristics increased from 32.0 to 36.0 as a direct result of these adjustments. In comparison to YOLOv3, our future study might examine the performance of alternative models like Faster R-CNN or RetinaNet.
不同训练启发式的YOLOv3改进羽毛球运动员检测
在过去的二十年里,在计算机视觉方面的研究和开发有了相当大的增长。计算机视觉中最关键的过程之一是“视觉跟踪”,这涉及到用相机跟踪物体。跟踪对象是指随着时间的推移跟踪单个移动对象或一组移动对象的实践。识别或连接羽毛球比赛连续视频帧中的目标元素需要视觉对象跟踪。本研究的目的是识别羽毛球运动员使用你只看一次(YOLO)技术结合各种训练启发式。与其他检测对象的方法相比,这种方法有一些优点。卷积神经网络和快速卷积神经网络是许多可用算法方法的两个例子。在这项研究中,使用神经网络来产生关于边界框和这些框的类概率的预测。结果表明,在识别图像的能力方面,该方法远远快于其他方法。由于实现了多种目标检测的训练策略,图像分类网络的性能得到了显著提高。这些调整的直接结果是,使用各种训练启发式的YOLOv3的平均精度分数从32.0提高到36.0。与YOLOv3相比,我们未来的研究可能会检查替代模型的性能,如Faster R-CNN或RetinaNet。
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
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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