Automatic image annotation method based on semi-supervised learning

A technology for automatic image labeling and semi-supervised learning, which is applied in the fields of instruments, character and pattern recognition, computer parts, etc.

Inactive Publication Date: 2018-01-30
GUANGXI NORMAL UNIV
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Problems solved by technology

[0006] Aiming at the problem that traditional image automatic labeling still requires a large number of manually labeled training samples, and the effect of automatic labeling is not ideal when the labeled sample data is small, the present invention provides an automatic image labeling method based on semi-supervised learning, which can fully Use unlabeled samples to mine the inherent laws of image features, effectively reduce the number of labeled samples required for classifier training, and obtain better labeling effects

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  • Automatic image annotation method based on semi-supervised learning

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[0040] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be further described in detail below in combination with specific examples and with reference to the accompanying drawings.

[0041] The overall framework of an image automatic labeling method based on semi-supervised learning is as follows: figure 1 As shown, it specifically includes the following steps:

[0042] Step (1) Divide the data set, and divide the data into three sub-data sets, which are training data set, unlabeled data set and test data set. The ratio of the three sub-datasets can be set manually, and the setting principle is unlabeled data set>test data set>training data set.

[0043] Step (2) The training process of training images is divided into several stages, which are LDA_SVM classifier training stage, neural network training stage and collaborative training stage.

[0044] Step (2.1) LDA_SVM classifier training stage.

[004...

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Abstract

The invention discloses an automatic image annotation method based on semi-supervised learning. The method comprises the steps that a data set is divided into a training data set, an unlabeled data set and a test set; the SIFT feature and the HOG feature of a training sample are extracted to train an LDA_SVM classifier; color and texture features are extracted to train a neural network; unlabeleddata are used to enable two classifiers to label and predict the same unlabeled sample simultaneously; according to the contribution of the classifiers to the unlabeled sample classification accuracy,the classification results of two classifiers are weighted and fused by an adaptive weighted fusion policy, so as to acquire the final prediction label probability vector of the sample; and finally two classifiers are updated by the sample with high confidence and the predictive label thereof until the preset maximum number of iterations is reached. According to the invention, the method can makefull use of the unlabeled sample to excavate the inherent law of the image feature; the number of annotation samples required for the classifier training is effectively reduced; the annotation effectis great.

Description

technical field [0001] The invention relates to the technical field of image retrieval, in particular to an automatic image labeling method based on semi-supervised learning. Background technique [0002] With the popularization of the network and digital devices, various media image data are increasing rapidly. How to organize and manage them effectively and provide users with efficient browsing and retrieval has become an extensive research issue for researchers. [0003] Image retrieval has become a very active research field since the 1970s. At present, widely used image retrieval technologies include Text-based Image Retrieval (TBIR) and Content-based Image Retrieval (Content-based Image Retrieval). -based Image Retrieval, CBIR). Due to the obvious defects of TBIR technology, especially when the number of images is very large, the workload required to manually label images is very large, and the subjectivity and inaccuracy of manual labeling are likely to cause image m...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62
Inventor 李志欣林兰张灿龙
Owner GUANGXI NORMAL UNIV
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