Quantum computing offers the potential to enhance computational efficiency beyond classical methods, but practical implementation remains challenging due to the limitations of Noisy Intermediate-Scale Quantum (NISQ) hardware, namely, restricted qubit counts, limited connectivity, and the presence of noise and decoherence. This study presents a novel approach to edge detection by leveraging a recently developed Quantum Fuzzy Inference Engine, implemented on a NISQ device. We introduce an optimized quantum circuit for its implementation, reducing qubit requirements and gate depth to improve execution on NISQ hardware. To overcome constraints related to large-scale image processing, a hybrid quantum–classical lookup table approach is employed. Edge detection performance is evaluated on the Berkeley Segmentation Data Set and Benchmarks 500 dataset under different conditions, including classical execution, ideal quantum simulation, noisy quantum simulation, and NISQ hardware calculation. Results demonstrate that the quantum fuzzy logic-based edge detection achieves outcomes comparable to classical methods by using fewer operations, marking a step toward practical quantum-enhanced image processing.

Quantum fuzzy logic for edge detection: A demonstration on NISQ hardware / Nunziata, G.; Crisci, S.; De Gregorio, G.; Schiattarella, R.; Acampora, G.; Coraggio, L.; Itaco, N.. - In: APPLIED SOFT COMPUTING. - ISSN 1568-4946. - 185:(2025). [10.1016/j.asoc.2025.113866]

Quantum fuzzy logic for edge detection: A demonstration on NISQ hardware

S. Crisci;R. Schiattarella
;
G. Acampora;N. Itaco
2025

Abstract

Quantum computing offers the potential to enhance computational efficiency beyond classical methods, but practical implementation remains challenging due to the limitations of Noisy Intermediate-Scale Quantum (NISQ) hardware, namely, restricted qubit counts, limited connectivity, and the presence of noise and decoherence. This study presents a novel approach to edge detection by leveraging a recently developed Quantum Fuzzy Inference Engine, implemented on a NISQ device. We introduce an optimized quantum circuit for its implementation, reducing qubit requirements and gate depth to improve execution on NISQ hardware. To overcome constraints related to large-scale image processing, a hybrid quantum–classical lookup table approach is employed. Edge detection performance is evaluated on the Berkeley Segmentation Data Set and Benchmarks 500 dataset under different conditions, including classical execution, ideal quantum simulation, noisy quantum simulation, and NISQ hardware calculation. Results demonstrate that the quantum fuzzy logic-based edge detection achieves outcomes comparable to classical methods by using fewer operations, marking a step toward practical quantum-enhanced image processing.
2025
Quantum fuzzy logic for edge detection: A demonstration on NISQ hardware / Nunziata, G.; Crisci, S.; De Gregorio, G.; Schiattarella, R.; Acampora, G.; Coraggio, L.; Itaco, N.. - In: APPLIED SOFT COMPUTING. - ISSN 1568-4946. - 185:(2025). [10.1016/j.asoc.2025.113866]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1030374
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