2021
DOI: 10.11591/ijeecs.v24.i3.pp1499-1514
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Integrated NIR-HE based SPOT-5 image enhancement method for features preservation and edge detection

Abstract: Recently, many researchers have directed their attention to methods of predicting shorelines by the use of multispectral images. Thus, a simple and optimised method using image enhancements is proposed to improve the low contrast of the Satellite pour l'Observation de la Terre-5 (SPOT-5) images in the detection of shorelines. The near-infrared (NIR) channel is important in this study to ensure the contrast of the vegetated area and sea classification, due to the high reflectance of leaves in the near infrared … Show more

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Cited by 1 publication
(1 citation statement)
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References 96 publications
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“…The steps in Canny edge detection are very important in digital image processing [26] and it is the first step in pattern recognition [27] as well as segmentation. This edge detection consists of taking the dairy cow image edges in order to retrieve useful information from the image [28]. The steps for edge detection include: i) noise reduction, which deals with smoothing the image using a Gaussian blur filter; ii) gradient calculation for producing two pieces of information from the image, such as the edge strength or its magnitude and the edge direction or orientation [29]; iii) non-maximum suppression, which is the stage of producing a slimmer thin-line using the orientation value in order to determine the pixel's direction; and iv) thresholding is the final step of the Canny algorithm, which is to perform hysteresis thresholds.…”
Section: Canny Edge Detectionmentioning
confidence: 99%
“…The steps in Canny edge detection are very important in digital image processing [26] and it is the first step in pattern recognition [27] as well as segmentation. This edge detection consists of taking the dairy cow image edges in order to retrieve useful information from the image [28]. The steps for edge detection include: i) noise reduction, which deals with smoothing the image using a Gaussian blur filter; ii) gradient calculation for producing two pieces of information from the image, such as the edge strength or its magnitude and the edge direction or orientation [29]; iii) non-maximum suppression, which is the stage of producing a slimmer thin-line using the orientation value in order to determine the pixel's direction; and iv) thresholding is the final step of the Canny algorithm, which is to perform hysteresis thresholds.…”
Section: Canny Edge Detectionmentioning
confidence: 99%