基于聚类索引和并行计算的高效大图像数据检索

Ja-Hwung Su, Chu-Yu Chin, Jyun-Yu Li, V. Tseng
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引用次数: 2

摘要

由于照片捕捉设备的进步,图像数据增长迅速。在传统上,由于图像数据并不庞大,过去的研究大多集中在有效性的提高上。然而,从海量的图像数据中获取图像需要很大的成本。因此,如何进行高效的图像检索一直是近几十年来的研究热点。为此,本文提出了基于聚类索引和并行计算的高效大图像数据检索方法。在脱机阶段,将图像分组到许多集群中。在在线阶段,通过逐级搜索检索查询图像的相关图像。我们的目的是进行一种比传统方法更有效的图像检索方法,同时保持相同的有效性。在实验中,对四种检索方法进行了比较,在精度非常接近的情况下,我们提出的并行化图像数据检索方法比其他比较方法要快得多。
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Efficient big image data retrieval using clustering index and parallel computation
Image data has grown rapidly because of advances on photo capturing devices. In traditional, because the image data has not been huge, most past studies focused on the effectiveness improvement. However, accessing the images from a huge amount of image data needs a large cost. Hence, how to perform efficient image retrieval has been a hot topic in the last few decades. To this end, in this paper, we propose efficient big image data retrieval by using clustering index and parallel computation. In the offline stage, the images are grouped into a number of clusters. In the online stage, the relevant images to the query image are retrieved by a level-wise search. Our intent is to conduct a more efficient image retrieval method in comparison with traditional methods but keep the same effectiveness still. In the experiments, four types of retrieval are compared and our proposed parallelized image data retrieval is much faster than the other compared methods under the very close accuracies.
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