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Automatic garment image labeling method

An automatic labeling and clothing image technology, applied in the direction of instruments, character and pattern recognition, computer components, etc., can solve the problems of understanding deviation, time-consuming, complicated labeling process, etc., and achieve the effect of reducing wrong labeling and improving accuracy

Inactive Publication Date: 2018-11-13
TAORAN SHIJIE HANGZHOU TECH CO LTD
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  • Application Information

AI Technical Summary

Problems solved by technology

[0003] 1. Due to the common understanding gap between the underlying visual features and high-level semantic concepts of clothing images, manual labeling of clothing images has been difficult to meet user needs;
[0004] 2. The entire labeling process is very complicated. When the amount of data is particularly large, it will require a lot of manual labor. Not only is it time-consuming and laborious, but it also has a lot of subjectivity;
[0005] 3. In the process of labeling clothing data, due to factors such as the limited energy of the labeler or the subjectivity of the labeler, the 100% accuracy of the labeling data cannot be guaranteed, that is, the quality of the labeling cannot be judged, and manual supervision is required
[0006] Therefore, the labeling process of a large amount of data is a very time-consuming and difficult to guarantee the accuracy of the task

Method used

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Embodiment Construction

[0018] In order to improve the accuracy of automatic labeling of images, the present invention proposes a method for automatic labeling of clothes images.

[0019] First extract the salient area of ​​the image, and use the salient object detection method to judge the sharpness of the image. When there is a sharpness difference between sub-regions in the image, the unsharp area suppression method is used to extract the salient area of ​​the image; when When there is no sharpness difference in the image, the saliency map of the image is calculated by using the saliency detection model of multi-feature fusion, and then the salient region of the image is extracted according to the saliency map.

[0020] Then extract the SIFT feature of the image, use K-means clustering to obtain the visual vocabulary, and perform different weighting operations according to whether the SIFT feature of the training image is located in the salient area to obtain the bag of words representation of the ...

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PUM

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Abstract

The invention discloses an automatic garment image labeling method. The method comprises the steps of 1, extracting a salient region of an image; 2, extracting an SIFT feature of the image, obtaininga visual vocabulary by utilizing K-mean clustering, and performing different weighted operations according to whether the SIFT feature of the training image is located in the salient region or not toobtain a bag-of-word representation of the visual vocabulary; and 3, training a classification model by using a support vector machine to realize image classification and labeling. Compared with the prior art, the method has the following advantages and effects that a large amount of labor is liberated to a great extent; the color of a garment can be directly positioned; the data labeling accuracycan be improved; and wrong labeling caused by subjective factors can be reduced.

Description

technical field [0001] The invention relates to an automatic tagging method for clothes images. Background technique [0002] At present, it mainly relies on a large amount of manual labor to label clothes. This labeling process has the following problems: [0003] 1. Due to the common understanding gap between the underlying visual features and high-level semantic concepts of clothing images, manual labeling of clothing images has been difficult to meet user needs; [0004] 2. The entire labeling process is very complicated. When the amount of data is particularly large, it will require a lot of manual labor. Not only is it time-consuming and laborious, but it also has a lot of subjectivity; [0005] 3. During the labeling process of clothing data, due to factors such as the limited energy of the labeler or the subjectivity of the labeler, the 100% accuracy of the labeling data cannot be guaranteed, that is, the quality of the labeling cannot be judged, and manual supervis...

Claims

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Application Information

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IPC IPC(8): G06K9/62G06K9/46
CPCG06V10/464G06F18/23213G06F18/2411
Inventor 陈鑫陈荣琛
Owner TAORAN SHIJIE HANGZHOU TECH CO LTD
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