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A Novel Image Retrieval Model

机译:一种新颖的图像检索模型

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摘要

Image retrieval is the hot point of researchers in many domains. Traditional text-based query methods use caption and keywords to annotate and retrieval image databases, which often consumes a mass of human labor. Feature vector based retrieval methods only can provide the query by example, and can't provide retrieval on semantic level. In this paper, we propose a novel image retrieval model that combines good qualities of those two methods above-mentioned. It utilizes the image low-level features and the user relevance feedback mechanism to classify ' images and acquire high-level semantic information. Furthermore, the image classification and the semantic information are not fixed, which can be changed by the user according to his preference. Experiments show that our scheme can achieve high efficiency.
机译:图像检索是许多领域研究人员的热点。传统的基于文本的查询方法使用标题和关键字来注释和检索图像数据库,这通常会消耗大量的人工。基于特征向量的检索方法只能提供示例查询,不能提供语义级别的检索。在本文中,我们提出了一种新颖的图像检索模型,该模型结合了上述两种方法的优良品质。它利用图像的低级特征和用户相关性反馈机制对图像进行分类并获取高级语义信息。此外,图像分类和语义信息不是固定的,可以由用户根据其偏好来改变。实验表明,该方案可以达到较高的效率。

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