Sketch-based image retrieval using sketch tokens

Shu Wang, Z. Miao
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引用次数: 4

Abstract

One fundamental challenge of Sketch-based Image Retrieval (SBIR) is the appearance gap between sketches and natural images. To bridge the gap, we propose a framework that describes both types of images based on sketch tokens. Sketch tokens are mid-level representations of local edge structures. Compared with describing images with pixel-level features, describing images with sketch tokens is more accurate and robust. We compute the responses of image patches to sketch tokens, and propose a local descriptor to describe object shape by capturing the sketch token responses. Bag-of-visual-word mode is utilized to represent images, and inverse indexing is built to accelerate the retrieval process. We compared the proposed work with state-of-the-art methods (SHoG, GF-HOG) on two public datasets. The experimental results show that our method outperforms them and significantly improves SBIR performance.
使用草图标记的基于草图的图像检索
基于草图的图像检索(SBIR)面临的一个基本挑战是草图与自然图像之间的外观差距。为了弥补这一差距,我们提出了一个框架,该框架基于草图标记来描述这两种类型的图像。草图标记是局部边缘结构的中级表示。与用像素级特征描述图像相比,用草图标记描述图像更准确、鲁棒。我们计算了图像补丁对草图标记的响应,并提出了一个局部描述符,通过捕获草图标记的响应来描述物体的形状。利用视觉词袋模式来表示图像,并建立逆索引来加快检索速度。我们在两个公共数据集上比较了建议的工作与最先进的方法(SHoG, GF-HOG)。实验结果表明,该方法优于现有方法,显著提高了SBIR的性能。
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