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Multimodal Image Retrieval Based on Keywords and Low-Level Image Features

机译:基于关键词和低级图像特征的多模态图像检索

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Image retrieval approaches dealing with the complex problem of image search and retrieval in very large image datasets proposed so far can be roughly divided into those that use text descriptions of images (text-based image retrieval) and those that compare visual image content (content-based image retrieval). Both approaches have their strengths and drawbacks especially in the case of searching for images in general unconstrained domain. To take advantage of both approaches, we propose a multimodal framework that uses both keywords and visual properties of images. Keywords are used to determine the semantics of the query while the example image presents the visual impression (perceptual and structural information) that retrieved images should suit. In the paper, the overview of the proposed multimodal image retrieval framework is presented. For computing the content-based similarity between images different feature sets and metrics were tested. The procedure is described with Corel and Flickr images from the domain of outdoor scenes.
机译:迄今为止,在非常大的图像数据集中处理图像搜索和检索的复杂问题的图像检索方法大致可分为使用图像文本描述的图像检索(基于文本的图像检索)和比较视觉图像内容的图像检索(内容-基于图像的检索)。两种方法都有其优点和缺点,特别是在一般不受约束的域中搜索图像的情况下。为了利用这两种方法,我们提出了一个使用关键字和图像视觉特性的多模式框架。关键字用于确定查询的语义,而示例图像则表示检索到的图像应适合的视觉印象(感知和结构信息)。在本文中,对所提出的多峰图像检索框架进行了概述。为了计算图像之间基于内容的相似性,测试了不同的特征集和度量。使用室外场景域中的Corel和Flickr图像描述了该过程。

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