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Commodity image classifying method based on complementary features and class description

A commodity image and classification method technology, applied in character and pattern recognition, instruments, computer parts, etc., can solve time-consuming and labor-intensive problems, and achieve the effect of improving image classification performance

Inactive Publication Date: 2013-05-01
DALIAN JIAOTONG UNIVERSITY
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

If the labeling of these potential interest information is done manually, it will undoubtedly be very time-consuming and labor-intensive for e-commerce websites with a large number of products and varieties.

Method used

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  • Commodity image classifying method based on complementary features and class description
  • Commodity image classifying method based on complementary features and class description
  • Commodity image classifying method based on complementary features and class description

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Experimental program
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Embodiment Construction

[0025] As shown in 1, the commodity image classification method based on complementary features and class descriptions is described in detail as follows:

[0026] Step 1. Take the classified images as training samples;

[0027] Step 2, extracting the complementary features of the tower gradient direction histogram and the tower keyword histogram of the picture in each marked image class, wherein the tower series is L (L=0, 1...n is a natural number);

[0028] Step 3, extracting the tower type gradient direction histogram and the tower type keyword histogram feature of the commodity image to be classified, wherein the tower type series is L (L=0, 1...n is a natural number);

[0029] Step 4, then calculate the class descriptors of each image class, namely represent the tower gradient direction histogram and tower keyword histogram features of each image class; wherein the tower series is L;

[0030] Step 5. Calculate the distance between the image of the product to be classifie...

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Abstract

The invention discloses a commodity image classifying method based on complementary features and class description, comprising the following steps of: firstly, taking the classified image as a training sample; secondly, carrying out the resolution compression on all marking image class and test pictures by using a picture batch editing tool; thirdly, extracting the complementary features of towertype gradient direction histograms and tower type key word histograms of the pictures in various marking images; fourthly, extracting the features of the tower type gradient direction histograms and the tower type key word histograms of images of commodities to be classified; fifthly, constructing a class descriptor of each marking image class; and sixthly, classifying the obtained feature vectors by using a nearest neighbor classification algorithm, calculating the distance between the images of the commodities to be classified and various marking image class descriptors and using the image class with the shortest distance as the classification result. According to the invention, two complementary features can be fully utilized and the classification result is more accurate by using the nearest neighbor classification algorithm based on the image-class distance.

Description

technical field [0001] The invention relates to a method for automatic classification of commodity images, in particular to an automatic classification algorithm for commodity images based on complementary features and an improved image-class distance algorithm. Background technique [0002] With the popularization and development of the Internet, e-commerce has gradually entered a new era, the number of e-commerce websites has increased dramatically, and a number of well-known e-commerce websites at home and abroad have emerged, such as Amazon, ebay, Taobao, etc. E-commerce websites need to mark the products sold online to facilitate users' search. Under the current circumstances, these labels only describe the basic information (meta information) of the product, such as the name, place of origin, size, price, etc. of the product, and it is difficult to reflect the complete characteristics of the product. For example: whether women’s leather shoes are round or pointed, whe...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/66
Inventor 贾世杰曾洁邹娟
Owner DALIAN JIAOTONG UNIVERSITY
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