非结构化数据管理系统AUDR中的图像检索

Junwu Luo, B. Lang, Chao Tian, Danchen Zhang
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引用次数: 6

摘要

图像数据的爆炸式增长对传统的图像检索方法提出了严峻的挑战。为了更准确、高效地管理海量图像,本文首先提出了一种基于统一数据模型的可扩展图像检索架构,并将该功能作为先进的非结构化数据管理系统AUDR的子引擎,实现对图像、视频、音频和文本等多种非结构化数据的同时管理。然后提出了一种新的图像检索算法,该算法结合了丰富的视觉特征和两种文本模型进行多模态检索。在ImageNet数据集和ImageCLEF医学数据集上的实验表明,我们提出的检索架构和新算法适用于海量图像的高效管理。
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Image retrieval in the unstructured data management system AUDR
The explosive growth of image data leads to severe challenges to the traditional image retrieval methods. In order to manage massive images more accurate and efficient, this paper firstly proposes a scalable architecture for image retrieval based on a uniform data model and makes this function a sub-engine of AUDR, an advanced unstructured data management system, which can simultaneously manage several kinds of unstructured data including image, video, audio and text. The paper then proposes a new image retrieval algorithm, which incorporates rich visual features and two text models for multi-modal retrieval. Experiments on both ImageNet dataset and ImageCLEF medical dataset show that our proposed architecture and the new retrieval algorithm are appropriate for efficient management of massive image.
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