TL;DR
This paper introduces HyFuHAD, an innovative hybrid quantum-fuzzy framework for hyperspectral anomaly detection that leverages Einstein fuzzy computing and quantum neural networks for improved accuracy and efficiency.
Contribution
The study develops a novel unsupervised hybrid quantum-fuzzy decision framework that enhances anomaly detection in hyperspectral images using Einstein fuzzy computing and quantum neural networks.
Findings
Achieves state-of-the-art detection performance on hyperspectral data.
Utilizes Einstein fuzzy computing for smoother fuzzy inference transitions.
Demonstrates real-time detection capability with sub-second inference time.
Abstract
In the remote sensing (RS) field, hyperspectral imagery provides rich spectral information and facilitates numerous critical applications, such as material identification. Among these applications, hyperspectral anomaly detection (HAD) aims to detect substances whose spectral characteristics deviate from background spectra, which are termed anomalies. However, many widely used HAD algorithms in the RS community identify anomalies by relying on a ``background reconstruction'' strategy. Furthermore, the lack of prior target hyperspectrum and real-world limitations collectively reduces the spectral discrepancy between anomaly and background, limiting the performance of mainstream detections. By exploring the widely applicable fuzzy theory in the RS field, this study develops an unsupervised hybrid quantum-fuzzy multi-criteria decision framework (HyFuHAD) to detect anomalies from multiple…
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