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Sports-Net18: Various Sports Classification using Transfer Learning

机译:Sports-Net18:使用转移学习的各种运动分类

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With the advancement of Computer Vision (CV) classification of sports images is very popular nowadays. Deep learning techniques have become feasible to use and see what happens inside the contents of an image. As videos are the collection of continuous images, or ‘frames’, this technique can be also used in videos. Computer Vision tends to reduce the complexities in the human visualization system and understanding by applying convolutional neural network models to accurately recognize and classify objects from the potential and asymmetrical physical world. Classification of images is now very popular in recent years as the emergence of computer vision technology but it is quite challenging. In this paper, we proposed a VGG16 transfer learning model to classify eighteen categories of various sports and we have created our sports dataset which contains 9000 images. Our proposed model has shown a promising result which is 93%.
机译:随着计算机视觉的进步(CV)体育图像的分类现在非常受欢迎。深入学习技术已经变得可行,看看图像内容内部发生的内容。作为视频是连续图像的集合或“帧”,该技术也可以用于视频中。计算机愿景倾向于降低人类可视化系统中的复杂性和通过应用卷积神经网络模型来准确地识别和分类来自潜在和不对称的物理世界的对象。近年来图像的分类现在是计算机视觉技术的出现,但它是非常具有挑战性的。在本文中,我们提出了一个VGG16转移学习模型,用于对各种运动的十八类进行分类,我们创建了我们的体育数据集,其中包含9000个图像。我们拟议的模型显示出有希望的结果为93%。

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