A Novel Method for Fashion Clothing Image Classification Based on Deep Learning

Q4 Computer Science
Seong-Yoon Shin, Gwanghyun Jo, Guangxing Wang
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引用次数: 2

Abstract

Image recognition and classification is a significant research topic in computational vision and widely used computer technology. Themethods often used in image classification and recognition tasks are based on deep learning, like Convolutional Neural Networks(CNNs), LeNet, and Long Short-Term Memory networks (LSTM). Unfortunately, the classification accuracy of these methods isunsatisfactory. In recent years, using large-scale deep learning networks to achieve image recognition and classification canimprove classification accuracy, such as VGG16 and Residual Network (ResNet). However, due to the deep network hierarchyand complex parameter settings, these models take more time in the training phase, especially when the sample number is small, which can easily lead to overfitting. This paper suggested a deep learning-based image classification technique based on a CNN model and improved convolutional and pooling layers. Furthermore, the study adopted the approximate dynamic learning rate update algorithm in the model training to realize the learning rate’s self-adaptation, ensure the model’s rapid convergence, and shorten the training time. Using the proposed model, an experiment was conducted on the Fashion-MNIST dataset, taking 6,000 images as the training dataset and 1,000 images as the testing dataset. In actual experiments, the classification accuracy of the suggested method was 93 percent, 4.6 percent higher than that of the basic CNN model. Simultaneously, the study compared the influence of the batch size of model training on classification accuracy. Experimental outcomes showed this model is very generalized in fashion clothing image classification tasks. 
基于深度学习的时尚服装图像分类新方法
图像识别与分类是计算视觉领域的一个重要研究课题,也是广泛应用的计算机技术。通常用于图像分类和识别任务的方法是基于深度学习的,如卷积神经网络(cnn)、LeNet和长短期记忆网络(LSTM)。不幸的是,这些方法的分类精度并不令人满意。近年来,利用大规模深度学习网络实现图像识别和分类可以提高分类精度,如VGG16和ResNet等。然而,由于网络层次较深,参数设置复杂,这些模型在训练阶段需要花费更多的时间,特别是在样本数较少的情况下,容易导致过拟合。本文提出了一种基于CNN模型并改进卷积层和池化层的基于深度学习的图像分类技术。在模型训练中采用近似动态学习率更新算法,实现了学习率的自适应,保证了模型的快速收敛,缩短了训练时间。利用所提出的模型,在Fashion-MNIST数据集上进行了实验,以6000张图像作为训练数据集,1000张图像作为测试数据集。在实际实验中,该方法的分类准确率为93%,比基本CNN模型的分类准确率提高了4.6%。同时,比较了模型训练的批大小对分类准确率的影响。实验结果表明,该模型在服装图像分类任务中具有很好的泛化性。
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
95
期刊介绍: IJICT is a refereed journal in the field of information and communication technology (ICT), providing an international forum for professionals, engineers and researchers. IJICT reports the new paradigms in this emerging field of technology and envisions the future developments in the frontier areas. The journal addresses issues for the vertical and horizontal applications in this area. Topics covered include: -Information theory/coding- Information/IT/network security, standards, applications- Internet/web based systems/products- Data mining/warehousing- Network planning, design, administration- Sensor/ad hoc networks- Human-computer intelligent interaction, AI- Computational linguistics, digital speech- Distributed/cooperative media- Interactive communication media/content- Social interaction, mobile communications- Signal representation/processing, image processing- Virtual reality, cyber law, e-governance- Microprocessor interfacing, hardware design- Control of industrial processes, ERP/CRM/SCM
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