We use cookies to improve your experience with our site.
刘弢, 刘轶, 李钦, 王香荣, 高飞, 朱延超, 钱德沛. SEIP:基于分布式平台的高效图像处理系统[J]. 计算机科学技术学报, 2015, 30(6): 1215-1232. DOI: 10.1007/s11390-015-1595-1
引用本文: 刘弢, 刘轶, 李钦, 王香荣, 高飞, 朱延超, 钱德沛. SEIP:基于分布式平台的高效图像处理系统[J]. 计算机科学技术学报, 2015, 30(6): 1215-1232. DOI: 10.1007/s11390-015-1595-1
Tao Liu, Yi Liu, Qin Li, Xiang-Rong Wang, Fei Gao, Yan-Chao Zhu, De-Pei Qian. SEIP: System for Efficient Image Processing on Distributed Platform[J]. Journal of Computer Science and Technology, 2015, 30(6): 1215-1232. DOI: 10.1007/s11390-015-1595-1
Citation: Tao Liu, Yi Liu, Qin Li, Xiang-Rong Wang, Fei Gao, Yan-Chao Zhu, De-Pei Qian. SEIP: System for Efficient Image Processing on Distributed Platform[J]. Journal of Computer Science and Technology, 2015, 30(6): 1215-1232. DOI: 10.1007/s11390-015-1595-1

SEIP:基于分布式平台的高效图像处理系统

SEIP: System for Efficient Image Processing on Distributed Platform

  • 摘要: 当前, 互联网上存在众多的图像数据, 随着云计算和大数据应用的发展, 不同的应用程序都需要使用特定的图像处理算法处理大规模的图像数据。与此同时, 图像处理算法种类繁多, 其中一些算法的变种相继出现, 新的算法也层出不穷。因此, 如何改善大规模图像数据的处理效率, 支持对已有图像处理算法进行系统集成, 是个亟需解决的问题。本文提出一种名为SEIP的分布式图像处理系统。该系统基于Hadoop, 在分布式平台上使用可扩展的节点内架构支持不同的图像处理算法, 并且支持GPU加速。系统使用了流水线架构加速大规模图像数据的处理速度。本文设计了提取图像数据特征的示例程序。系统使用小规模的、带有GPU加速卡的Hadoop集群进行了测试, 实验结果证明了SEIP的可用性和高效性。

     

    Abstract: Nowadays, there exist numerous images in the Internet, and with the development of cloud computing and big data applications, many of those images need to be processed for different kinds of applications by using specific image processing algorithms. Meanwhile, there already exist many kinds of image processing algorithms and their variations, while new algorithms are still emerging. Consequently, an ongoing problem is how to improve the efficiency of massive image processing and support the integration of existing implementations of image processing algorithms into the systems. This paper proposes a distributed image processing system named SEIP, which is built on Hadoop, and employs extensible innode architecture to support various kinds of image processing algorithms on distributed platforms with GPU accelerators. The system also uses a pipeline-based framework to accelerate massive image file processing. A demonstration application for image feature extraction is designed. The system is evaluated in a small-scale Hadoop cluster with GPU accelerators, and the experimental results show the usability and efficiency of SEIP.

     

/

返回文章
返回