Cross-media feature learning retrieval method based on semi-supervision

A feature learning and cross-media technology, applied in the field of retrieval, can solve problems such as large dimensions and affecting computational complexity of algorithms

Active Publication Date: 2018-09-28
WUHAN UNIV OF SCI & TECH
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AI Technical Summary

Problems solved by technology

However, the dimensionality of the original features is usually l

Method used

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  • Cross-media feature learning retrieval method based on semi-supervision
  • Cross-media feature learning retrieval method based on semi-supervision
  • Cross-media feature learning retrieval method based on semi-supervision

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Embodiment Construction

[0074] The specific implementation manners of the present invention will be described below in conjunction with the accompanying drawings.

[0075] Such as figure 1 Shown is a flow chart of a semi-supervised cross-media feature learning method based on the present invention, combined below figure 1 The present invention is described further, and the concrete realization steps of the inventive method are as follows:

[0076] (1) Establish a multimedia database;

[0077] Described step (1) comprises the steps:

[0078] (1.1) Collect multimedia raw data: you can collect it yourself, or use a public data set. Here, for the accuracy of the data, use a public data set, Wikipedia data set;

[0079] (1.2) extract the feature of multimedia data: adopt appropriate method to extract the feature of every kind of media type data respectively;

[0080] (2) Obtain the projection matrix of different media types;

[0081] Described step (2) comprises the steps:

[0082] (2.1) Define the ...

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Abstract

The invention provides a cross-media feature learning retrieval method based on semi-supervision. The method comprises the following steps that: S1: establishing a multimedia database; S2: solving theprojection matrixes of different media types; and S3: carrying out cross-media retrieval; and S3: carrying out cross-media retrieval. The S2 comprises the following steps that: 2.1: defining a targetfunction; 2.2: optimizing the target function; and 2.3: projecting the original feature of the multimedia data to a public space. The S3 comprises the following steps that: 3.1: extracting the feature of the media data submitted by a user: according to the media type of the data submitted by the user, using a pre-trained model to extract the feature of the data; 3.2: projecting the feature vectorof the media data into a common space; 3.3: calculating a similarity between the projected feature vector and other vectors in the common space; and 3.4: returning the first k pieces of media data with the highest similarity. By use of the method, calculation complexity is lowered, noise robustness is realized, and retrieval accuracy is improved.

Description

technical field [0001] The invention relates to a semi-supervised-based cross-media feature learning retrieval method, which belongs to the field of retrieval. Background technique [0002] With the development of modern computer science and technology, multimedia data such as images, texts, and videos on the Internet are increasing rapidly. Content-based multimedia retrieval has become more and more important, and a lot of research has been done on it. Traditional content-based retrieval methods usually focus on single mode retrieval, such as image retrieval, text retrieval. In this case, query and retrieval results are of the same media type. However, single-mode retrieval cannot fully exploit diverse media data. To solve this problem, cross-media retrieval has been proposed and becomes more and more important. It is designed to query one type of data as a query to retrieve related data objects of another type. For example, users can use pictures of tigers to retrieve...

Claims

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Application Information

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IPC IPC(8): G06F17/30
Inventor 张鸿齐婷婷
Owner WUHAN UNIV OF SCI & TECH
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