卷积神经网络方法在时尚图像识别中的应用

Christian Sri Kusuma Aditya, Vinna Rahmayanti Setyaning Nastiti, Qori Raditya Damayanti, Gian Bagus Sadewa
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引用次数: 0

摘要

多年来,时装业发生了很大变化,这使得人们很难对不同种类的时装进行比较。为了方便起见,人们会尝试不同风格的服装,以找到所需的精确造型。因此,我们选择使用卷积神经网络(CNN)方法进行时装分类。这种方法是利用计算机对物品进行识别和分类的方法之一。本研究的目标是,与以往研究中使用的其他方法、模型和分类过程相比,看看卷积神经网络方法对时尚-MNIST 数据集的分类效果如何。该数据集中的信息涉及不同类型的服装和配饰。这些物品分为 10 个类别,包括踝靴、包、外套、连衣裙、套头衫、凉鞋、衬衫、运动鞋、T恤和裤子。新的分类方法在测试数据集上的效果比以前更好。它的准确率达到了 95.92%,高于之前的研究。这项研究还使用了一种名为图像数据生成器的方法,使时尚 MNIST 图像变得更好。这种方法有助于避免过于关注某些细节,使结果更加准确。
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Implementation of Convolutional Neural Network Method in Identifying Fashion Image
The fashion industry has changed a lot over the years, which makes it hard for people to compare different kinds of fashion. To make it easier, different styles of clothing are tried out to find the exact and precise look desired. So, we opted to employ the Convolutional Neural Network (CNN) method for fashion classification. This approach represents one of the methodologies employed to utilize computers for the purpose of recognizing and categorizing items. The goal of this research is to see how well the Convolutional Neural Network method classifies the Fashion-MNIST dataset compared to other methods, models, and classification processes used in previous research. The information in this dataset is about different types of clothes and accessories. These items are divided into 10 categories, which include ankle boots, bags, coats, dresses, pullovers, sandals, shirts, sneakers, t-shirts, and trousers. The new classification method worked better than before on the test dataset. It had an accuracy value of 95. 92%, which is higher than in previous research. This research also uses a method called image data generator to make the Fashion MNIST image better. This method helps prevent too much focus on certain details and makes the results more accurate.
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