Abstract

With the rapid development of the Internet of things and e-commerce, feature-based image retrieval and classification have become a serious challenge for shoppers searching websites for relevant product information. The last decade has witnessed great interest in research on content-based feature extraction techniques. Moreover, semantic attributes cannot fully express the rich image information. This paper designs and trains a deep convolutional neural network that the convolution kernel size and the order of network connection are based on the high efficiency of the filter capacity and coverage. To solve the problem of long training time and high resource share of deep convolutional neural network, this paper designed a shallow convolutional neural network to achieve the similar classification accuracy. The deep and shallow convolutional neural networks have data pre-processing, feature extraction and softmax classification. To evaluate the classification performance of the network, experiments were conducted using a public database Caltech256 and a homemade product image database containing 15 species of garment and 5 species of shoes on a total of 20,000 color images from shopping websites. Compared with the classification accuracy of combining content-based feature extraction techniques with traditional support vector machine techniques from 76.3% to 86.2%, the deep convolutional neural network obtains an impressive state-of-the-art classification accuracy of 92.1%, and the shallow convolutional neural network reached a classification accuracy of 90.6%. Moreover, the proposed convolutional neural networks can be integrated and implemented in other colour image database.

Highlights

  • With the popularity of the Internet and varieties of terminal equipment, online shopping has become a regular part of people’s lives with the onset of websites such as Amazon, Dangdang, Taobao, and Jingdong

  • This study proposed a novel deep Convolutional Neural Network (CNN) that has data augmentation pre-processing, feature extraction, and softmax classification

  • This section describes the pre-processing of the product images and the architecture of the deep convolutional neural network is used for classification of the garments and shoes

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Summary

Introduction

With the popularity of the Internet and varieties of terminal equipment, online shopping has become a regular part of people’s lives with the onset of websites such as Amazon, Dangdang, Taobao, and Jingdong. Customers view a large number of product images, and there is an urgent need for efficient product image classification methods. Most studies have mainly focused on keyword-based, label-based, and content-based image retrieval. Zhou [1] used a querying and relevance feedback scheme based on keywords and low-level visual content, incorporating keyword similarities. He [2] proposed a method based on the Multi-Modal Semantic Association Rule (MMSAR) to automatically combine keywords with visual features automatically for image retrieval. If we set an image classification filter on a shopping website, it will be convenient for users to browse and quickly find their favorite products

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