Content-Based Retrieval of Images for Cultural Institutions Using Local Descriptors

Eduardo Valle, M. Cord, S. Philipp-Foliguet
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引用次数: 18

Abstract

The task of identifying an image whose metadata are missing is often demanded from cultural image collections holders, such as museums and archives. The query image may present distortions (cropping, rescaling rotations, colour changes, noise...) from the original, which poses an additional complication. The majority of proposed solutions are based on classic image signatures, such as the colour histogram. Our approach, however, follows computer vision methods, and is based on local descriptors. In this paper we describe our approach, explain the SIFT method on which it is based and compared it to the multiscale-CCV, an established scheme employed in a large scale practical system. We demonstrate experimentally the efficacy of our approach, which achieved a 99,2% success rate, against 61,0% for the multiscale-CCV, in a database of photos, drawings and paintings
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基于内容的局部描述符文化机构图像检索
识别元数据丢失的图像的任务通常要求文化图像收藏持有者,如博物馆和档案馆。查询图像可能呈现出与原始图像相比的失真(裁剪、重新缩放旋转、颜色变化、噪声……),这带来了额外的复杂性。大多数提出的解决方案是基于经典的图像签名,如颜色直方图。然而,我们的方法遵循计算机视觉方法,并基于局部描述符。在本文中,我们描述了我们的方法,解释了其所基于的SIFT方法,并将其与多尺度ccv进行了比较,这是一种在大型实际系统中采用的既定方案。我们通过实验证明了该方法的有效性,在照片、图纸和绘画数据库中,该方法的成功率为99.2%,而多尺度ccv的成功率为61.5%
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