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Dyed fabric defect detection method based on convolutional neural network

A convolutional neural network and detection method technology, which is applied in the field of color-dyed fabric defect detection based on convolutional neural network, can solve the problems of low detection efficiency, labor and material resources, and easy to be affected by subjective factors, and achieve fast defect detection , the effect of high accuracy

Active Publication Date: 2020-02-14
XIAN HUODE IMAGE TECH CO LTD
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  • Application Information

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Problems solved by technology

[0007] The purpose of the present invention is to provide a color-dyed fabric defect detection method based on convolutional neural network, which solves the problems of low detection efficiency, easy to be affected by subjective factors, and labor-intensive and material-resource-consuming problems in the existing traditional artificial color-dyed fabric defect detection

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  • Dyed fabric defect detection method based on convolutional neural network
  • Dyed fabric defect detection method based on convolutional neural network
  • Dyed fabric defect detection method based on convolutional neural network

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Embodiment Construction

[0046] The present invention will be further described below in conjunction with the accompanying drawings:

[0047] Some terms in the present invention are explained as follows:

[0048] Number of network layers: The convolutional neural network extracts image features through convolution operations. The first convolutional layer extracts the detailed features of the image edges. As the number of convolutional layers increases, the features are continuously fused and can be extracted. The overall feature map of the image is obtained. The more convolutional layers, the more accurate and comprehensive the learned image features will be. However, it is not that the more convolutional layers, the better. The increase in the number of network layers will lead to an increase in the amount of computer computation and a slower program running efficiency. In addition to this, convolutional neural networks also contain pooling layers, fully connected layers and dropout layers. Poolin...

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Abstract

The invention discloses a convolutional neural network-based yarn dyed fabric defect detection method. The method comprises a training stage and a detection stage in total. In the training stage, firstly a yarn dyed fabric defect image library is established, and images are preprocessed for reducing the influence of noises and image textures; the images and image tags are packaged; and an AlexNet convolutional neural network-based yarn dyed fabric defect detection model is built; a series of operations of image convolution, pooling, batch normalization, full connection and the like are carried out; defect features in the images are extracted; and a convolution kernel number, a layer number, a network structure and the like of the network model are improved, so that the accuracy of predicting test images by the built convolutional neural network model is further improved. By using a deep learning method, the convolutional neural network model is built for detecting yarn dyed fabric image defects. Compared with a conventional method, a detection result is more accurate and the yarn dyed fabric defects can be detected more efficiently.

Description

technical field [0001] The invention belongs to the technical field of deep learning and machine vision, and relates to a dyed fabric defect detection method based on a convolutional neural network. Background technique [0002] my country is a big country in textile production and export. With the development and progress of science and technology, the textile industry is also facing fierce competition while prospering and developing. Improving the quality of textiles is the key factor to improve the competitiveness of my country's textile industry. Defective textiles will affect sales and waste a lot of manpower and material resources, so being able to detect defects early will help improve product quality and enhance work efficiency in the production process. However, at present, defect detection is done manually, which is easily interfered by human subjective factors. The detection efficiency is low, the investment is large, and long-term continuous work has great damage...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T7/00G06N3/04G06N3/08
CPCG06T7/001G06T2207/20081G06T2207/20084G06T2207/30124
Inventor 景军锋董阿梅李鹏飞张蕾张宏伟
Owner XIAN HUODE IMAGE TECH CO LTD
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