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Accelerating Image Retrieval Using Factorial Correspondence Analysis on GPU

机译:在GPU上使用阶乘对应分析加速图像检索

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We are interested in the intensive use of Factorial Correspondence Analysis (FCA) for large-scale content-based image retrieval. Factorial Correspondence Analysis, is a useful method for analyzing textual data, and we adapt it to images using the SIFT local descriptors. FCA is used to reduce dimensions and to limit the number of images to be considered during the search. Graphics Processing Units (GPU) are fast emerging as inexpensive parallel processors due to their high computation power and low price. The G80 family of Nvidia GPUs provides the CUDA programming model that treats the GPU as a SIMD processor array. We present two very fast algorithms on GPU for image retrieval using FCA: the first one is a parallel incremental algorithm for FCA and the second one is an extension of the filtering algorithm in our previous work for filtering step. Our implementation is able to scale up the FCA computation a factor of 30 compared to the CPU version. For retrieval tasks, the parallel version on GPU performs 10 times faster than the one on CPU. Retrieving images in a database of 1 million images is done in about 8 milliseconds.
机译:我们对大规模基于内容的图像检索大量使用阶乘对应分析(FCA)感兴趣。阶乘对应分析是一种分析文本数据的有用方法,我们使用SIFT本地描述符将其适应于图像。 FCA用于缩小尺寸并限制搜索过程中要考虑的图像数量。图形处理单元(GPU)由于具有较高的计算能力和较低的价格而迅速成为廉价的并行处理器。 G80系列Nvidia GPU提供了CUDA编程模型,该模型将GPU视为SIMD处理器阵列。我们在GPU上使用FCA提出了两种非常快速的图像检索算法:第一种是针对FCA的并行增量算法,第二种是我们先前过滤步骤中过滤算法的扩展。与CPU版本相比,我们的实现能够将FCA计算规模扩大30倍。对于检索任务,GPU上的并行版本比CPU上的并行版本快10倍。在大约8毫秒内检索一百万个图像的数据库中的图像。

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