2020 Joint 9th International Conference on Informatics, Electronics &Amp; Vision (ICIEV) and 2020 4th International Conference 2020
DOI: 10.1109/icievicivpr48672.2020.9306532
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A Warp Speed Chain-Code Algorithm Based on Binary Decision Trees

Abstract: Contours extraction, also known as chain-code extraction, is one of the most common algorithms of binary image processing. Despite being the raster way the most cache friendly and, consequently, fast way to scan an image, most commonly used chain-code algorithms perform contours tracing, and therefore tend to be fairly inefficient. In this paper, we took a rarely used algorithm that extracts contours in raster scan, and optimized its execution time through template functions, look-up tables and decision trees,… Show more

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“…Obviously, all the classic operations for image manipulation such as rotation, resizing, mirroring and colour space change are available. Extremely optimized processing functions, like noising, blurring, contour finding [26], image skeletonization [27] and connected components labelling [28] are implemented as well. ECVL image-processing operations can be applied on-the-fly during deep neural networks training to implement data augmentation.…”
Section: The European Computer Vision Librarymentioning
confidence: 99%
“…Obviously, all the classic operations for image manipulation such as rotation, resizing, mirroring and colour space change are available. Extremely optimized processing functions, like noising, blurring, contour finding [26], image skeletonization [27] and connected components labelling [28] are implemented as well. ECVL image-processing operations can be applied on-the-fly during deep neural networks training to implement data augmentation.…”
Section: The European Computer Vision Librarymentioning
confidence: 99%