Cross-media sorting method based on deep neural network

A deep neural network and sorting method technology, applied in special data processing applications, instruments, electrical digital data processing, etc., can solve the problems of limited retrieval performance, large number of images, keywords cannot objectively reflect all the semantics of images, etc. Sorting performance, the effect of good feature expression

Inactive Publication Date: 2015-01-28
ZHEJIANG UNIV
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AI Technical Summary

Problems solved by technology

However, the number of existing images is huge, making the labeling process a huge amount of work.
Moreover, since the annotation content will inevitably be affected by the subjective factors of the annotator, for the same image, different annotators may annotate different keywords, so the keywords often cannot objectively reflect all the semantics contained in the image.
The content-based image retrieval technology does not need to label the image, and image retrieval is realized based on comparing the similarity between the retrieval samples submitted by users and the retrieved images, but the traditional content-based image retrieval technology has two weaknesses: one One is that the user can only retrieve media objects of the same type as the query example, for example, images can only be retrieved through images; the other is that there is a semantic gap between the underlying features of the image and the high-level semantics, that is, the low-level features cannot directly reflect the high-level semantics, so the retrieval performance is limited

Method used

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  • Cross-media sorting method based on deep neural network

Examples

Experimental program
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Embodiment

[0046] In order to verify the effect of the present invention, about 2900 webpages were grabbed from the webpage of "Wikipedia-Daily One Picture", which were divided into 10 categories, and each webpage contained an image and several relevant description texts. Experiment with this data set. If both the image and the text belong to one of the 10 categories, the image and the text are considered to be related, otherwise they are not. The data set is divided into a training set and a test set, and the present invention performs training on the training set, and then independently evaluates on the test set. Carry out according to said step of the present invention for feature extraction, wherein after removing common words and uncommon words, text space is set as 5000 dimensions. In order to objectively evaluate the performance of the algorithm of the present invention, the present invention is evaluated using Mean Average Precision (MAP). The results of MAP are shown in Table ...

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Abstract

The invention discloses a cross-media sorting method based on a deep neural network. The method comprises the following steps that (1) a sorting sample of using a text to retrieve an image or a sorting sample of using the image to retrieve the text is constructed as a training sample; (2) cross-media sorting study based on the deep neural network is conducted to the constructed training sample, and multimedia semantic space and a cross-media sorting model are obtained; (3) the studied cross-media sorting model is adopted to conduct cross-media retrieval. Due to the use of the deep neural network driven by cross-media sorting data, the semantic comprehensive ability of the obtained retrieval model is stronger, and using the text to retrieve the image or using the image to retrieve the text to obtain a superficial model method with a traditional performance is better.

Description

technical field [0001] The invention relates to cross-media retrieval, in particular to a deep neural network-based cross-media sorting method. Background technique [0002] Images have rich semantics. Generally speaking, an image is composed of individual pixels, and the computer cannot directly understand the semantic information contained in the image. With the development of multimedia technology and network technology, more and more images emerge. Retrieval technology can help users quickly find the content they are interested in from massive data, and has become an increasingly important field in computer application technology. The traditional retrieval technology, whether it is keyword-based retrieval or content-based retrieval, cannot well meet the needs of users who want to retrieve images with text or retrieve text with images. In a keyword-based retrieval system, images need to be annotated in advance. However, the huge number of existing images makes the lab...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30G06K9/66
CPCG06F16/3331G06F16/5846
Inventor 吴飞鲁伟明卢鑫炎王东辉汤斯亮邵健庄越挺
Owner ZHEJIANG UNIV
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