Image Compression and Reconstruction Based on Quantum Network
- URL: http://arxiv.org/abs/2404.11994v1
- Date: Thu, 18 Apr 2024 08:39:58 GMT
- Title: Image Compression and Reconstruction Based on Quantum Network
- Authors: Xun Ji, Qin Liu, Shan Huang, Andi Chen, Shengjun Wu,
- Abstract summary: Quantum networks make image reconstruction more efficient and accurate.
They can process more complex image information using fewer bits and faster parallel computing capabilities.
This paper introduces the basic structure of the quantum network, the process of image compression and reconstruction, and the specific parameter training method.
- Score: 5.569248673725028
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum network is an emerging type of network structure that leverages the principles of quantum mechanics to transmit and process information. Compared with classical data reconstruction algorithms, quantum networks make image reconstruction more efficient and accurate. They can also process more complex image information using fewer bits and faster parallel computing capabilities. Therefore, this paper will discuss image reconstruction methods based on our quantum network and explore their potential applications in image processing. We will introduce the basic structure of the quantum network, the process of image compression and reconstruction, and the specific parameter training method. Through this study, we can achieve a classical image reconstruction accuracy of 97.57\%. Our quantum network design will introduce novel ideas and methods for image reconstruction in the future.
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