基于施密特分解的高效量子图像编码方法 / Schmidt Decomposition-Based Methods for Efficient Quantum Image Encoding
1️⃣ 一句话总结
本文提出利用施密特分解对量子图像编码进行低秩近似,通过保留图像中最关键的量子纠缠结构,显著减少了量子电路的复杂度和资源消耗,实验表明FRQI编码方案在保持图像近乎完美还原(MSE约0.27)的同时,电路深度降低了97%,为当前噪声量子设备上的图像处理提供了实用化途径。
In quantum image processing, a fundamental step is encoding classical image data into quantum states. This can be achieved using methods such as Flexible Representation of Quantum Images (FRQI), Quantum Probability Image Encoding (QPIE), and Novel Enhanced Quantum Representation (NEQR). However, on real quantum hardware, these encodings can quickly lead to circuits with many gates, large circuit depth, and high qubit usage, which is a problem for Noisy Intermediate-Scale Quantum (NISQ) devices. In this work, we investigate whether low-rank state approximation, formulated via Schmidt decomposition, can help reduce this complexity. The method keeps only the most significant parts of a quantum state's entanglement structure, making state preparation more efficient while preserving most of the image information. We compare the three encoding techniques in their original form and with low-rank approximation, evaluating metrics such as circuit depth, CNOT count, MSE, and visual quality of reconstructed images. The results reveal meaningful trade-offs between accuracy and resource efficiency, with the FRQI model achieving a 97 percent reduction in circuit depth while maintaining a near-perfect reconstruction (MSE of about 0.27). This demonstrates the potential of low-rank techniques for advancing practical quantum image processing on near-term hardware.
基于施密特分解的高效量子图像编码方法 / Schmidt Decomposition-Based Methods for Efficient Quantum Image Encoding
本文提出利用施密特分解对量子图像编码进行低秩近似,通过保留图像中最关键的量子纠缠结构,显著减少了量子电路的复杂度和资源消耗,实验表明FRQI编码方案在保持图像近乎完美还原(MSE约0.27)的同时,电路深度降低了97%,为当前噪声量子设备上的图像处理提供了实用化途径。
源自 arXiv: 2606.10874