2021
DOI: 10.1155/2021/2337712
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Fractional-Order Adaptive P -Laplace Equation-Based Art Image Edge Detection

Abstract: In recent years, with the rapid development of image processing research, the study of nonstandard images has gradually become a research hotspot, for example, fabric images, remote sensing images, and gear images. Some of the remote sensing images have a complex background and low illumination compared with standard images and are easy to be mixed with noise during acquisition; some of the fabric images have rich texture information, which adds difficulty to the related processing, and are also easy to be mix… Show more

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“…The method proposed in [26] is an improved Canny algorithm based on morphology, where the used morphological filtering not only removes image noise but also strengthens the protection of image edges, and the double-detection thresholds are used for further segmentation to obtain final edge points. The method proposed in [27] provides a fractional-order adaptive p-Laplace equation image edgedetection algorithm. This method preserves the texture and details of the image while removing noise to detect image edges.…”
Section: Introductionmentioning
confidence: 99%
“…The method proposed in [26] is an improved Canny algorithm based on morphology, where the used morphological filtering not only removes image noise but also strengthens the protection of image edges, and the double-detection thresholds are used for further segmentation to obtain final edge points. The method proposed in [27] provides a fractional-order adaptive p-Laplace equation image edgedetection algorithm. This method preserves the texture and details of the image while removing noise to detect image edges.…”
Section: Introductionmentioning
confidence: 99%