基于卷积神经网络的部落服饰自动识别与分类系统

Ashraful Islam, Tuhin Chowdhury, Mehrab Hossain, Nafiz Nahid, Ariful Islam Rifat
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引用次数: 1

摘要

提供部落服装的互联网企业数量不断增加,人们往往会夸大他们在这些网站上购物的频率。然而,我们担心这些服装的真实性。该研究建议使用卷积神经网络(CNN)来自动识别和分类一些孟加拉国部落使用的特定部落服装的真实图像,并将其分类为预定的类别。这项研究的动力来自商业的扩张以及将这些传统服装传播到全球的愿望。为了对服装进行分类,我们从实际的部落住宅,商店和一些在线市场中获取了图像。为此,我们努力提供了一个我们标记为“TribalBd”的数据集,它有680个样本,包括6个不同的类别。然后,使用YOLOv5, YOLOv6和YOLOv7模型将这些数据集放在我们的CNN上进行检测和分类。作为评估我们模型有效性的一种手段,我们已经试验了许多不同的CNN拓扑和调整。我们用YOLOv6和YOLOv7对模型进行了测试。YOLOv5在这些模型中取得了最好的结果。最终结果表明,在训练集和测试集的图像分类中,YOLOv6模型的准确率为86.24%,YOLOv7模型的准确率为71.28%,YOLOv5模型的准确率为89.97%,均优于其他两种模型。
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An Automatic System for Identifying and Categorizing Tribal Clothing Based on Convolutional Neural Networks
The quantity of internet businesses providing tribal clothes is constantly increasing, and people tend to exaggerate how often they shop at such sites. However, we are concerned about the authenticity of the outfits. The study recommends using Convolutional Neural Networks (CNN) to automatically identify and categorize authentic images of particular tribal dresses used by some Bangladeshi tribes into predetermined categories. The study's impetus comes from the expansion of commerce and the desire to spread these traditional clothes over the globe. In order to categorize the clothing, we obtained images from actual tribal residences, shops, and a few online marketplaces. To that end, we made an effort to provide a dataset we've labeled “TribalBd,” which has 680 samples, including six different classes. Then, use the YOLOv5, YOLOv6, and YOLOv7 models to put these datasets for detection and classification on our CNN. As a means of evaluating the efficacy of our model, we have experimented with a number of different CNN topologies and tweaks. We put the model through its tests with YOLOv6 and YOLOv7. YOLOv5 achieved the best results among these models. The final result shows that the YOLOv6 model gives 86.24%, the YOLOv7 model gives 71.28% accuracy whereas YOLOv5 gives 89.97% accuracy in classifying the images in the training and testing sets which are best compared to the other two models.
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