Edge Detection Quantumized: A Novel Quantum Algorithm For Image Processing
Quantum image processing is a research field that explores the use of quantum computing and algorithms for image processing tasks such as image encoding and edge detection. Although classical edge detection algorithms perform reasonably well and are quite efficient, they become outright slower when...
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Zusammenfassung: | Quantum image processing is a research field that explores the use of quantum
computing and algorithms for image processing tasks such as image encoding and
edge detection. Although classical edge detection algorithms perform reasonably
well and are quite efficient, they become outright slower when it comes to
large datasets with high-resolution images. Quantum computing promises to
deliver a significant performance boost and breakthroughs in various sectors.
Quantum Hadamard Edge Detection (QHED) algorithm, for example, works at
constant time complexity, and thus detects edges much faster than any classical
algorithm. However, the original QHED algorithm is designed for Quantum
Probability Image Encoding (QPIE) and mainly works for binary images. This
paper presents a novel protocol by combining the Flexible Representation of
Quantum Images (FRQI) encoding and a modified QHED algorithm. An improved edge
outline method has been proposed in this work resulting in a better object
outline output and more accurate edge detection than the traditional QHED
algorithm. |
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DOI: | 10.48550/arxiv.2404.06889 |