A Similar Image Retrieval Method Based on Local Feature Neighborhood Information

A technology of local features and neighborhood information, applied in still image data retrieval, metadata still image retrieval, computer parts, etc., can solve the problems of low feature matching accuracy, feature locality and quantization error, and low computational efficiency. Achieve the effects of enhancing visual matching, improving accuracy, and high computing efficiency

Active Publication Date: 2017-10-24
TONGJI UNIV
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0005] First, due to the locality of features and quantization errors, the feature matching accuracy is very low, and there are a large number of wrong matches, which affect the final retrieval accuracy
[0006] Second, a large number of algorithms focus on the information of the feature points themselves, ignoring the strong correlation between the neighborhood information of the feature points and the feature points
[0007] Third, some algorithms try to use the spatial relationship between feature points for spatial verification, but such methods generally consume additional computing resources and steps, and the computational efficiency is not high

Method used

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  • A Similar Image Retrieval Method Based on Local Feature Neighborhood Information
  • A Similar Image Retrieval Method Based on Local Feature Neighborhood Information
  • A Similar Image Retrieval Method Based on Local Feature Neighborhood Information

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Embodiment Construction

[0051] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.

[0052] Such as figure 1 and figure 2 As shown, the similar image retrieval method based on local feature neighborhood information provided by the present invention includes two parts: offline training and online retrieval. Such as figure 1 As shown, the specific process of offline training is:

[0053] Step S101, obtain the training picture, use the Hessian-Affine feature point detection algorithm and the SIFT local feature descriptor to perform feature detection and description on the picture in the multi-scale space, specifically:

[0054] a) Use the Hessian-Affine feature point detection algorithm to image I i Perform detection to obtain the corresponding local feature point set Pi ={p i,1 ,...,p i,m}, i=1, 2, ... n, n is the total number of pictures, and m is the number of local feature points in each picture;

[0055] b) Using SI...

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Abstract

The present invention relates to a similar picture retrieval method based on local feature neighborhood information, comprising: 1) acquiring training pictures; 2) using Hessian-Affine feature point detection algorithm and SIFT local feature descriptor to feature the pictures in multi-scale space Detect and describe; 3) according to step 2) feature structure corresponding shadow feature extracted; 4) utilize k-means clustering algorithm to step 2) the feature extracted in step 2) is clustered and generates the visual dictionary that comprises K visual words; 5) Map all the above-mentioned features one by one to the visual vocabulary with the smallest L2 distance, and store in the inverted index structure; 6) Save the inverted index to form a query database; 7) Obtain the corresponding inverted index of the query picture , and compare it with the query database to obtain a list of search results. Compared with the prior art, the invention has the advantages of high image retrieval accuracy and the like.

Description

technical field [0001] The invention relates to a picture retrieval method, in particular to a similar picture retrieval method based on local feature neighborhood information. Background technique [0002] In recent years, computer vision has been developing rapidly. Among them, similar image retrieval is a basic but challenging task, so it has attracted much attention. [0003] Currently, the bag-of-words model based on local features and inverted index structure is one of the most commonly used image retrieval models. Image local features are a type of features used in the field of image processing. Finding extreme points in the scale space, extracting position, scale, and rotation invariants can detect key points in the image. The bag-of-words model is an approximate method for feature matching. In this model, a local feature is quantized to its nearest visual word in a pre-trained dictionary and stored in an inverted index for querying. [0004] However, the above i...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F17/30G06K9/66
CPCG06F16/58G06F16/583G06V30/194
Inventor 王瀚漓王雷
Owner TONGJI UNIV
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