Migration classification learning method for maintaining sparse structure of image classification

A learning method and image technology, applied in the fields of instruments, character and pattern recognition, computer parts, etc., can solve the problem that the image classification effect is not very satisfactory.

Active Publication Date: 2018-04-10
NANJING UNIV OF POSTS & TELECOMM
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Problems solved by technology

However, since manifold regularization is used to describe local structural information, this regularization framework is not very satisfactory for image classification.

Method used

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  • Migration classification learning method for maintaining sparse structure of image classification
  • Migration classification learning method for maintaining sparse structure of image classification
  • Migration classification learning method for maintaining sparse structure of image classification

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Embodiment Construction

[0081] Below in conjunction with accompanying drawing, technical scheme of the present invention is described in further detail:

[0082] Such as figure 1 As shown, the present invention discloses a migration classification learning method that maintains the sparse structure of image classification, comprising the following steps:

[0083] Step 1), collect source domain image data, source domain image labels and target domain image data, the feature space of the source domain image data and target domain image data is the same: if both collect the grayscale of each pixel in each image As each feature value, the distribution of the source domain image data and the target domain image data are required to be different. For example, the shooting lighting conditions of the source domain image and the target domain image are different, and the labels (categories) contained in the source domain and the target domain are required to be consistent. .

[0084] Step 2), using methods ...

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Abstract

The invention discloses a migration classification learning method for maintaining a sparse structure of image classification. The method includes the steps of finding two different source and targetdomains with similar distribution, the source domain containing label data, firstly, training a classification classifier on the source domain by using a supervised classification method, and predicting a pseudo label of target domain data by using the classifier; secondly, constructing edge distribution and conditional distribution terms of the source and target domain data respectively by usingthe maximum mean difference, and combining the both to form a joint distribution term; thirdly, constructing a sparse representation matrix S on all the data by using an effective projection sparse learning toolkit, to construct a sparse structure preserving term; fourthly, constructing a structural risk minimization term by using the structural risk minimization principle; and fifthly, combiningthe structural risk minimization term, the joint distribution term, and the sparse structure preserving term to construct a uniform migration classification learning framework, and substituting into the framework using a classification function representation theorem including a kernel function to obtain a classifier that can be finally used to predict the target domain category.

Description

technical field [0001] The invention relates to the technical field of transfer learning classification in machine learning, in particular to a transfer classification learning method for maintaining the sparse structure of image classification. Background technique [0002] Traditional machine learning has two basic assumptions, one is that the test samples and training samples should satisfy independent and identical distribution, and the other is that there must be enough available training samples. However, these two conditions are often not easy to meet, so transfer learning came out as the times require. Transfer learning is a method of using known content knowledge to solve related but different fields. Use the knowledge already known in a field to solve the problem that there are only a few labeled samples or even no labeled samples in the learning target field. Often, the smaller the difference between the two fields and the more factors they share, the easier and ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62
CPCG06F18/2136G06F18/2411G06F18/214
Inventor 赵丹汪云云
Owner NANJING UNIV OF POSTS & TELECOMM
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