CVQUANT-PHFeb 16, 2023

Detecting Clouds in Multispectral Satellite Images Using Quantum-Kernel Support Vector Machines

arXiv:2302.08270v136 citationsh-index: 35
Originality Incremental advance
AI Analysis

This is an incremental improvement for satellite image analysis, potentially enhancing processing efficiency in remote sensing applications.

The authors tackled cloud detection in multispectral satellite images by extending classical SVMs with quantum kernels, achieving accuracy comparable to classical RBF kernels on large datasets.

Support vector machines (SVMs) are a well-established classifier effectively deployed in an array of classification tasks. In this work, we consider extending classical SVMs with quantum kernels and applying them to satellite data analysis. The design and implementation of SVMs with quantum kernels (hybrid SVMs) are presented. Here, the pixels are mapped to the Hilbert space using a family of parameterized quantum feature maps (related to quantum kernels). The parameters are optimized to maximize the kernel target alignment. The quantum kernels have been selected such that they enabled analysis of numerous relevant properties while being able to simulate them with classical computers on a real-life large-scale dataset. Specifically, we approach the problem of cloud detection in the multispectral satellite imagery, which is one of the pivotal steps in both on-the-ground and on-board satellite image analysis processing chains. The experiments performed over the benchmark Landsat-8 multispectral dataset revealed that the simulated hybrid SVM successfully classifies satellite images with accuracy comparable to the classical SVM with the RBF kernel for large datasets. Interestingly, for large datasets, the high accuracy was also observed for the simple quantum kernels, lacking quantum entanglement.

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