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The Robustness of the Edge Detection on Noisy Natural Images with HED and PiDiNet Networks

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dc.contributor.author Polyakova, M.
dc.contributor.author Khyrenko, S.
dc.date.accessioned 2025-05-27T19:59:40Z
dc.date.available 2025-05-27T19:59:40Z
dc.date.issued 2024
dc.identifier.citation Polyakova M. The Robustness of the Edge Detection on Noisy Natural Images with HED and PiDiNet Networks / M. Polyakova, S. Khyrenko // CEUR Workshop Proceedings, 3702, 2024. - 144-156. en
dc.identifier.uri http://dspace.opu.ua/jspui/handle/123456789/15304
dc.description.abstract The edge detection performance of the HED and PiDiNet networks is compared on noised natural images. To research the robustness of edge detection with HED and PiDiNet networks, the technique of detecting the influence of the noise level on the CNN edge detector efficiency is proposed. At first, as a result of literature review, HED and PiDiNet are selected to detect edges on noisy images. Then types of image noise of interest to the researcher and the noise parameters which will be controlled by the researcher are determined. We considered white Gaussian noise, impulse noise, and speckle noise. Mathematical modeling of noisy images is performed. Next, the training and test sets from image datasets for edge detection is selected. After that, the researched networks are learned to detect edges on training set of images or weights of pre-trained networks are loaded. Further the measures of edge detection performance are selected, specifically, Precision, Recall, F1-score, and Pratt's Figure of Merit. Then images of test set are corrupted with controlled level of noise. The trained networks are applied to noisy images and the edge detection performance is evaluated depending on the noise level in the images. The obtained results are analyzed to generate the recommendations allowing to determine which CNN is better for edge detection when natural images affected by different level of white Gaussian noise, or impulse noise, or speckle noise. In particular, the HED network is generally preferred at high noise levels. The PiDiNet network is best used when the noise level is low. en
dc.language.iso en_US en
dc.subject Edge detection en
dc.subject noisy image en
dc.subject HED network en
dc.subject PiDiNet network en
dc.title The Robustness of the Edge Detection on Noisy Natural Images with HED and PiDiNet Networks en
dc.type Article en
opu.citation.firstpage 144 en
opu.citation.lastpage 156 en


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