An Unsupervised Domain Adaptive Image Classification Method Based on Conditional Generative Adversarial Networks

A technology of conditional generation and classification, applied in biological neural network models, computer parts, instruments, etc., can solve problems such as the limitations of classification tasks, achieve considerable use value, improve classification accuracy, and improve domain adaptation performance.

Active Publication Date: 2020-09-01
NANJING NORMAL UNIVERSITY
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Problems solved by technology

However, although such methods improve the performance of domain adaptation to a certain extent, they are still limited for classification tasks. They only achieve cross-domain image generation by aligning sample distributions while ignoring the impact of classification labels during this period.

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  • An Unsupervised Domain Adaptive Image Classification Method Based on Conditional Generative Adversarial Networks
  • An Unsupervised Domain Adaptive Image Classification Method Based on Conditional Generative Adversarial Networks
  • An Unsupervised Domain Adaptive Image Classification Method Based on Conditional Generative Adversarial Networks

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Embodiment Construction

[0042] The technical solutions of the present invention will be described in detail below in conjunction with the accompanying drawings.

[0043] like figure 1 As shown, the present invention proposes an unsupervised domain-adaptive image classification method based on conditional generative adversarial networks. The core step of the present invention is to construct conditional adversarial image generation networks and combine labeled source domain images to effectively utilize unlabeled target Domain image training, the description of the specific implementation mainly focuses on step 2.

[0044] Step 1. Image preprocessing

[0045] The quality of the image has a direct impact on the realization of the algorithm and the classification effect. Normalizing images is a way to simplify calculations and is of great significance for improving classification accuracy. Given an image sample X, according to the formula img=(X-mean) / std, where the mean and std are set to 0.5, the ima...

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Abstract

The invention discloses an unsupervised domain adaptive image classification method based on a conditional generative adversarial network. The method comprises the following steps: preprocessing an image data set; constructing a cross-domain conditional confrontation image generation network by adopting a cyclic consistent generation confrontation network and applying a constraint loss function; using the preprocessed image data set to train the constructed conditional adversarial image generation network; and testing the to-be-classified target image by using the trained network model to obtain a final classification result. According to the method, a conditional adversarial cross-domain image migration algorithm is adopted to carry out mutual conversion on source domain image samples andtarget domain image samples, and consistency loss function constraint is applied to classification prediction of target images before and after conversion. Meanwhile, discriminative classification tags are applied to carry out conditional adversarial learning to align joint distribution of source domain image tags and target domain image tags, so that the source domain image with the tags is applied to train the target domain image, classification of the target image is achieved, and classification precision is improved.

Description

technical field [0001] The invention belongs to the field of unsupervised domain adaptive image classification, and in particular relates to an unsupervised domain adaptive image classification method based on conditional generation confrontation network. Background technique [0002] The development of deep learning is of great significance to the improvement of feature learning and classification task performance. Training a deep network requires a large number of labeled samples, but in practical applications, the target samples to be classified often lack category labels, which makes classification training particularly difficult. Faced with this difficulty, the usual practice is to train an effective classifier from labeled source domain samples to assist in the classification of unlabeled target domain samples, but how to reduce the distribution of source domain samples and target domain samples The difference is crucial to make this classifier better adaptable to the...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62G06N3/04
Inventor 杨琬琪凌彤杨明
Owner NANJING NORMAL UNIVERSITY
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