一种基于语义的图切图像检索方法

Hai-Minh Nguyen, Van Thanh The, T. Lang
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引用次数: 0

摘要

图像的语义提取是一个热门问题,在许多不同的语义搜索系统中都有应用。本文提出了一种基于与输入图像相似的图像集的语义图像检索方法;然后,通过视觉词向量在本体上查询图像的语义。通过Mask R-CNN对每张图像的对象进行提取和分类,并存储在聚类图中,提取图像的语义。在聚类图上提取查询图像的相似图像;然后,应用k-NN算法寻找视觉词向量作为基础,通过SPARQL查询在本体上查询查询图像的语义。基于所提出的方法,在MIRFLICKR-25K和MS COCO两个大容量图像数据集上建立了实验并进行了评估。实验结果与最近发表的相同数据集的实验结果进行了比较,以证明所提出方法的有效性。实验结果表明,本文提出的语义图像检索方法将MIRFLICKR-25K和MS COCO的检索精度分别提高到0.897和0.833。
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A METHOD OF SEMANTIC-BASED IMAGE RETRIEVAL USING GRAPH CUT
Semantic extraction for images is a topical problem and is applied in many different semantic search systems. In this paper, a method of semantic image retrieval is proposed based on the set of similar images to the input image; then, the semantics of the images are queried on the ontology through the visual words vector. The objects of each image are extracted and classified by the Mask R-CNN and stored on the cluster graph to extract semantics for the image. The similar images of query image are extracted on the cluster graph; then, the k-NN algorithm is applied to find the visual words vector as the basis for querying the semantic of the query image on the ontology by the SPARQL query. On the basis of the proposed method, an experiment was built and evaluated on two large-volume image datasets MIRFLICKR-25K and MS COCO. Experimental results are compared with recently published works on the same datasets to demonstrate the effectiveness of the proposed method. According to the experimental results, the method of semantic image retrieval in this paper has improved the accuracy to 0.897 for MIRFLICKR-25K, 0.833 for MS COCO.
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