Acceleration of clustering-based superpixel algorithms with low memory costs

Tse-Wei Chen, Noriyasu Hashiguchi, M. Ariizumi, Kinya Osa, Daisuke Nakashima, Yasuo Fukuda, Shiori Wakino, Shinji Shiraga, Masami Kato
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引用次数: 1

Abstract

As a pre-processing step of image segmentation, superpixel algorithms are used to produce small, uniform and compact regions, which can be used for region-based image coding, region-based image processing, and object recognition. In order to meet the requirements of real-time applications for embedded computing, it is necessary to reduce the computational costs of superpixel algorithms and increase the processing speed. In this paper, a series of acceleration schemes for superpixels algorithm is proposed. The features and contributions of this work are stated as follows. Firstly, the spatial distances and the color distances are calculated individually, so that the redundant distance computations can be saved. Secondly, by searching the nearest cluster centroids with centroid priority, the nearest clusters can be found at an early stage. Thirdly, the early-termination mechanism can be applied to the search process to speed up the algorithm without decreasing the quality of image segmentation. Fourthly, the storage for label images and distance images is not required since the operations of nearest centroids are processed in the inner loop of the algorithm. The experiments show that the proposed method achieves the same level of performance as the related work with only 75% of distance computations and 33% of memory costs.
基于聚类的低内存开销超像素算法的加速
超像素算法作为图像分割的预处理步骤,利用超像素算法产生小、均匀、紧凑的区域,可用于基于区域的图像编码、基于区域的图像处理和目标识别。为了满足嵌入式计算实时应用的要求,必须降低超像素算法的计算成本,提高处理速度。本文针对超像素算法提出了一系列的加速方案。本文的特点和贡献如下:首先分别计算空间距离和颜色距离,避免了冗余的距离计算;其次,通过质心优先级搜索最近的聚类质心,可以较早地找到最近的聚类;第三,在不降低图像分割质量的前提下,将早终止机制应用到搜索过程中,加快算法速度。第四,不需要存储标签图像和距离图像,因为在算法的内循环中处理了最近质心的操作。实验表明,该方法仅需要75%的距离计算和33%的内存成本,就可以达到与相关工作相同的性能水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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