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Large-scale grid computing for content-based image retrieval

机译:基于内容的图像检索的大规模网格计算

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摘要

Purpose - Content-based image retrieval (CBIR) technologies offer many advantages over purely text-based image search. However, one of the drawbacks associated with CBIR is the increased computational cost arising from tasks such as image processing, feature extraction, image classification, and object detection and recognition. Consequently CBIR systems have suffered from a lack of scalability, which has greatly hampered their adoption for real-world public and commercial image search. At the same time, paradigms for large-scale heterogeneous distributed computing such as grid computing, cloud computing, and utility-based computing are gaining traction as a way of providing more scalable and efficient solutions to large-scale computing tasks. Design/methodology/approach - This paper presents an approach in which a large distributed processing grid has been used to apply a range of CBIR methods to a substantial number of images. By massively distributing the required computational task across thousands of grid nodes, very high through-put has been achieved at relatively low overheads.rnFindings - This has allowed one to analyse and index about 25 million high resolution images thus far, while using just two servers for storage and job submission. The CBIR system was developed by Imense Ltd and is based on automated analysis and recognition of image content using a semantic ontology. It features a range of image-processing and analysis modules, including image segmentation, region classification, scene analysis, object detection, and face recognition methods. Originality/value - In the case of content-based image analysis, the primary performance criterion is the overall through-put achieved by the system in terms of the number of images that can be processed over a given time frame, irrespective of the time taken to process any given image. As such, grid processing has great potential for massively parallel content-based image retrieval and other tasks with similar performance requirements.
机译:目的-基于内容的图像检索(CBIR)技术比纯粹基于文本的图像搜索具有许多优势。但是,与CBIR相关的缺点之一是由于诸如图像处理,特征提取,图像分类以及对象检测和识别等任务而导致的计算成本增加。因此,CBIR系统缺乏可扩展性,这极大地阻碍了它们在现实世界中公共和商业图像搜索中的采用。同时,诸如网格计算,云计算和基于实用程序的计算之类的大规模异构分布式计算的范式正逐渐受到人们的关注,这是一种为大规模计算任务提供更可扩展,更有效的解决方案的方式。设计/方法/方法-本文提出一种方法,其中使用大型分布式处理网格将大量CBIR方法应用于大量图像。通过将所需的计算任务大规模地分布在数千个网格节点上,以相对较低的开销实现了很高的吞吐量。rnFindings-到目前为止,仅使用两台服务器,就可以分析和索引约2500万张高分辨率图像。用于存储和提交作业。 CBIR系统由Imense Ltd开发,基于使用语义本体对图像内容的自动分析和识别。它具有一系列图像处理和分析模块,包括图像分割,区域分类,场景分析,对象检测和面部识别方法。原创性/价值-对于基于内容的图像分析,主要性能标准是系统在给定时间范围内可以处理的图像数量方面所获得的总体吞吐量,而与所花费的时间无关处理任何给定的图像。这样,网格处理对于大规模并行基于内容的图像检索以及具有类似性能要求的其他任务具有巨大的潜力。

著录项

  • 来源
    《Aslib Proceedings》 |2010年第5期|P.438-446|共9页
  • 作者

    Chris Town; Karl Harrison;

  • 作者单位

    University of Cambridge Computer Laboratory and Imense Ltd, Cambridge, UK;

    School of Physics and Astronomy, University of Birmingham, Birmingham, UK;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    data handling; pattern recognition; data analysis; virtual work;

    机译:数据处理;模式识别;数据分析;虚拟工作;
  • 入库时间 2022-08-17 23:15:48

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