Texture recognition method based on local binary threshold learning network

A local binary, learning network technology, applied in the field of image processing, can solve the problems of loss of advantage of feature learning, inability to obtain enough training samples, hardware equipment guarantee time cost, consumption of computing time, etc.

Active Publication Date: 2017-12-15
WUHAN UNIV
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AI Technical Summary

Problems solved by technology

However, hundreds of layers of networks and tens of millions of data cannot be separated from the support of expensive hardware devices while ensuring the actual effect, and will also consume a lot of computing time
More importantly, in the face of actual application requirements, it is often impossible to obtain enough training samples or sufficient hardware equipment to ensure time cost
In such cases, feature learning often loses its advantages

Method used

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  • Texture recognition method based on local binary threshold learning network
  • Texture recognition method based on local binary threshold learning network
  • Texture recognition method based on local binary threshold learning network

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Embodiment Construction

[0031] The technical solution of the present invention will be described in detail below in conjunction with the drawings and embodiments.

[0032] The present invention provides two threshold learning schemes of 8 channels and 16 channels, the principle is as follows figure 1 , figure 2 As shown, the corresponding network structure is as image 3 , Figure 4 shown. The specific process of the embodiment of the present invention includes the following steps,

[0033] Step 1 Prepare the texture image dataset to be classified, and the implementation method is as follows:

[0034] Before execution, it is necessary to prepare M texture image datasets D to be classified, divide the dataset D into two non-overlapping sub-datasets on average, and train the dataset D t and the test dataset D v , used for training and cross-validation, respectively; the size of all dataset images is n×n pixels.

[0035] Step 2 Construct a local binary threshold learning network and input the tr...

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Abstract

The invention relates to a texture recognition method based on a local binary threshold learning network. The method comprises steps: 1, a to-be-classified texture image data set D is prepared, and the data set D is divided to a training data set Dt and a test data set Dv; 2, the local binary threshold learning network is built, the training data set Dt is inputted, and the local binary threshold learning network is trained through error sensitive term reverse propagation and a random gradient algorithm, wherein the local binary threshold learning network comprises one input layer, one threshold coding layer, two convolution layers, three down sampling layers, one full connection layer and one output layer; and 3, the test data set Dv is inputted to the well-trained local binary threshold learning network to verify a training result. According to the texture image classification method based on the local binary threshold learning network, through learning the structure information of the texture features, the method is applicable to texture image recognition in a small sample condition.

Description

technical field [0001] The invention belongs to the technical field of image processing, and in particular relates to a method for classifying texture images using local binary networks based on threshold value learning. Background technique [0002] Texture analysis is an active research topic in the field of computer vision, and has long played an important role in many fields such as object recognition, remote sensing analysis, content-based image retrieval, etc. Texture features contain a series of important information such as the structure distribution of the object surface and its relationship with the surrounding environment. It is of great significance for the research and application of computer images, especially for the classification of images. Effective classification is often inseparable from Open the description of the image texture. [0003] Traditional image classification methods usually include three steps: feature extraction, feature expression, and cla...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62
CPCG06F18/241G06F18/214
Inventor 何楚熊德辉刘新龙陈语
Owner WUHAN UNIV
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