Multi-source ciphertext image retrieval method based on federated learning and secret sharing

A technology of secret sharing and image retrieval, applied in neural learning methods, digital data information retrieval, instruments, etc., can solve problems such as high time consumption, existing precision problems, and low precision, and achieve high security, simple structure, and guaranteed practicality sexual effect

Active Publication Date: 2022-04-01
NANHU LAB
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0006] (1) Does not support multi-source ciphertext image retrieval, all existing single-cloud platform solutions cannot fully meet the functional requirements of multi-source ciphertext image retrieval, and all have the problem of low accuracy
Although the multi-cloud platform solution is easy to expand into a multi-source solution, the existing strategies still generally have problems such as high time consumption or insufficient security
[0007] (2) The retrieval accuracy is insufficient. The existing optimal ciphertext image retrieval scheme considers the convolutional layer features of the pre-trained neural network, which still has a large room for improvement in accuracy under large samples, while the rest of the traditional features or statistics Feature schemes have problems with accuracy even with small samples
[0008] (3) Time consumption is high. Among the existing high-precision solutions based on dual-cloud platforms, the technology based on secret sharing strategy is the lowest consumption. high communication time

Method used

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  • Multi-source ciphertext image retrieval method based on federated learning and secret sharing
  • Multi-source ciphertext image retrieval method based on federated learning and secret sharing
  • Multi-source ciphertext image retrieval method based on federated learning and secret sharing

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Embodiment Construction

[0054] Below in conjunction with accompanying drawing this scheme is further explained:

[0055] Such as figure 1 As shown, the following is a detailed introduction to the steps of using the multi-source ciphertext image retrieval method based on federated learning and secret sharing when it is put into use:

[0056] Dual cloud platform initialization:

[0057] S11 Two service providers who do not collude with each other form a dual-cloud platform to confirm the number of image types involved in their business scope ;

[0058] Use of S12 dual cloud platform The network is the network structure of a convolutional neural network, including convolutional layers, activation functions, pooling layers, and fully connected layers, and uses the parameters trained by the ImageNet database as initial weights, and removes the neural network in step S11 according to the number of categories. The last fully connected layer, and replace it with a new fully connected layer to ensure t...

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Abstract

This scheme discloses a multi-source ciphertext image retrieval method based on federated learning and secret sharing, which includes the following steps: S1. Based on federated learning, the image owner who joins the dual cloud platform is a federation member to perform convolutional neural network analysis on the dual cloud platform. Network for model training; S2. Authorized users complete ciphertext image retrieval based on additive secret sharing with the help of dual cloud platforms. This solution provides a multi-source ciphertext image retrieval solution based on federated learning and secret sharing, uses federated learning to simplify the neural network model structure used in retrieval, obtains better network parameters, and exchanges the cost of the image owner for better neural network parameters With a more streamlined network model structure, better convolutional neural networks can be used in ciphertext image retrieval, allowing users to get better and faster results when searching.

Description

technical field [0001] The invention belongs to the technical field of ciphertext image retrieval, and in particular relates to a multi-source ciphertext image retrieval method based on federated learning and secret sharing. Background technique [0002] With the increasing popularity of electronic imaging equipment, image resources have increased significantly, people began to have the need to find similar images, and the Internet has also begun to provide similar services, such as Baidu and other services that provide image search services. However, high-quality image resources are of high value and should not be directly published on the Internet. Therefore, it is a practical task to consider a solution to support image owners to outsource their own high-value images to the cloud platform, and at the same time ensure that the cloud platform can support retrieval services for these ciphertext images without knowing the content of the images. The existing ciphertext image ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F16/583G06F7/58G06N3/04G06N3/08
CPCG06F16/583G06F7/588G06N3/08G06N3/045G06F21/602G06N3/0464H04L9/085G06N3/084H04L9/008G06F21/6218G06N3/098G06N3/048Y02D10/00
Inventor 张磊
Owner NANHU LAB
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