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A decisive content based image retrieval approach for feature fusion in visual and textual images

机译:基于果实基于内容的视觉和文本图像特征融合的图像检索方法

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摘要

Image content analysis plays a dynamic role in various computer vision applications. These contents can be either visual (i.e. color, shape, texture) or the textual (i.e. text appearing within images). Both the contents involve fundamental characteristics of an image and thus can be an enormous asset for any intelligent application. For content based image retrieval (CBIR) systems, most of the art methods are either annotated text based or the visual search based. Due to high demand of multitasking, there is a great need of a system that can combine visual as well as textual features. Consequently, this work proposes a decisive CBIR approach that combines visual and textual features to retrieve similar images. Firstly, the method classifies the query image as textual and non-textual. If any text appears within the image then the query image is classified as textual, and the text is detected and formed as Bag of Textual words. If the query image is classified as non-textual, the visual salient features are extracted and formed as Bag of Visual words. Next, the method fuses the visual and textual features, and top similar images are retrieved based on the fused feature vector. It supports three modes of retrieval: Image query, Keywords, and a combination of both. The experimental results on four datasets show the efficiency and accuracy of the proposed approach for visual and textual images. (C) 2019 Elsevier B.V. All rights reserved.
机译:图像内容分析在各种计算机视觉应用中扮演动态作用。这些内容可以是视觉(即颜色,形状,纹理)或文本(即在图像中出现的文本)。内容涉及图像的基本特征,因此可以是任何智能应用的巨大资产。对于基于内容的图像检索(CBIR)系统,大多数本领域方法是基于注释文本的或基于视觉搜索。由于对多任务的需求很高,很需要一个可以将视觉和文本特征组合的系统。因此,这项工作提出了一种决定性的CBIR方法,其结合了视觉和文本特征来检索类似图像。首先,该方法将查询图像分类为文本和非文本。如果在图像中出现任何文本,则查询图像被分类为文本,并检测到文本并形成为文本单词的袋子。如果查询图像被归类为非文本,则会提取视力特征,并形成为视觉单词的袋子。接下来,该方法熔化视觉和文本特征,并且基于融合特征向量检索顶部类似图像。它支持三种检索模式:图像查询,关键字和两者的组合。四个数据集的实验结果显示了视觉和文本图像所提出的方法的效率和准确性。 (c)2019 Elsevier B.v.保留所有权利。

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