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FAST IMPLEMENTATION OF MORPHOLOGICAL OPERATIONS USING BINARY IMAGE BLOCK DECOMPOSITION

机译:利用二值图像块分解快速实现形态学操作

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Morphological transformations are commonly used to perform a variety of image processing tasks. However, morphological operations are time-consuming procedures since they involve ordering and min/max computation of numbers resulting from image interaction with structuring elements. This paper presents a new method that can be used to speed up basic morphological operations for binary images. To achieve this, the binary images are first decomposed in a set of non-overlapping rectangular blocks of foreground pixels that have predefined maximum dimensions. Then off-line dilation and erosion of all rectangular blocks are arbitrary obtained and stored into suitable look-up array tables. By using the look up tables, the results of the morphological operations to the rectangular blocks are directly obtained. Thus, first all image blocks are replaced by their look-up array tables. Then the morphological operations are applied only to the limited number of the remaining pixels. Experimental results reveal that starting from a block represented binary image morphological operations can be executed with different types of structuring elements in significantly less CPU time. Using the block representation, we are able to perform dilation 16 times faster than non-fast implementations and 10 times faster than an alternative fast implementation based on contour processing. Significant acceleration is also recorded when using this approach for repeated application of dilation (for 10 iterations, dilation using the block representation is over 20 times faster than non-fast implementations and over four times faster than using the fast contour based approach).
机译:形态转换通常用于执行各种图像处理任务。然而,形态学运算是耗时的过程,因为它们涉及对与结构元素进行图像交互而产生的数字进行排序和最小/最大计算。本文提出了一种新方法,可用于加快二进制图像的基本形态学运算。为此,首先将二进制图像分解为一组具有预定义最大尺寸的前景像素的非重叠矩形块。然后,任意获得所有矩形块的离线膨胀和腐蚀,并存储到合适的查找阵列表中。通过使用查找表,可以直接获得对矩形块进行形态学运算的结果。因此,首先所有图像块都被其查找阵列表取代。然后,仅将形态学运算应用于有限数量的剩余像素。实验结果表明,从一个块表示的二进制图像形态学操作开始,可以用不同类型的结构元素执行,而CPU时间却大大减少了。使用块表示,我们能够比非快速实现快16倍,比基于轮廓处理的替代快速实现快10倍。当使用此方法重复应用膨胀时,也会记录到显着的加速度(对于10次迭代,使用块表示法进行的膨胀比非快速实现快20倍以上,比使用基于快速轮廓的方法快4倍以上)。

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