Vectorization of constant-time gray-scale morphological processing algorithm using AltiVec

R. Saran, A. Sarje
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引用次数: 1

Abstract

Mathematical morphology is widely used in the area of signal and image analysis. It has enormous applications in detection of weak targets, object recognition and feature extraction, edge detection, image enhancement and many more. However, its use has long been hampered by its algorithmic complexity as the size of the structuring element or image grows. With the trend toward larger images and proportionally larger structuring element, the need for a fast and more efficient morphological processing algorithms become pressing. The performance of morphological processing algorithm can be speedup using AltiVec vetor processing unit. But the AltiVec programmers are frequently disappointed to discover that their AltiVec code is not much faster than their pre-existing scalar code. In some cases it may even be slower. In this correspondence, a new, simple yet much faster vectorized algorithm using AltiVec exhibiting constant-time complexity is described and analyzed. It is compared against the scalar version of the algorithm and other implementations. The proposed vectorized constant-time gray-scale morphological processing algorithm using AltiVec outperforms the 2-D naïve implementation, IXLib-AV library based implementation and the scalar version of constant-time morphological processing algorithm. It also exhibits the run time complexity independent of size of structuring element.
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基于AltiVec的恒时灰度形态处理矢量化算法
数学形态学在信号和图像分析领域有着广泛的应用。它在弱目标检测、目标识别和特征提取、边缘检测、图像增强等方面有着广泛的应用。然而,随着结构元素或图像的大小增加,其算法复杂性一直阻碍着它的使用。随着图像的大型化和结构元素比例的增大,对快速高效的形态学处理算法的需求日益迫切。使用AltiVec矢量处理单元可以提高形态学处理算法的性能。但是AltiVec程序员经常失望地发现他们的AltiVec代码并不比他们已经存在的标量代码快多少。在某些情况下,它甚至可能更慢。本文描述和分析了一种新的、简单但速度更快的矢量化算法,该算法使用AltiVec呈现出恒定的时间复杂度。将其与算法的标量版本和其他实现进行比较。本文提出的基于AltiVec的矢量化恒时灰度形态处理算法优于二维naïve实现、基于IXLib-AV库的实现和标量版本的恒时形态学处理算法。它还显示了与结构元素大小无关的运行时复杂性。
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