视觉搜索的显著性权值和局部象限约束

Hongwei Zhao, Zhimeng Nong, Pingping Liu, Qingliang Li
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引用次数: 1

摘要

近年来,基于图像和视频的直接视觉搜索的需求越来越强烈。大多数大规模图像检索系统都是基于词袋(BoW)或其变体。对于目前在BoW结构下的视觉搜索算法,需要解决两个关键问题:量化的视觉词可能会降低局部特征的判别能力和忽略局部特征之间的空间关系。为了解决这些问题,我们提出了一种基于显著性和局部象限约束的新方法。首先,我们将显著权值引入到BoW的量化阶段。我们利用图像显著性进行逆文档(IDF)加权。在生成图像的直方图表达式时,我们计算特征的显著性,而不是简单地计算特征的数量。其次,在后处理步骤中引入局部变形的显著性和相似性特征,以满足局部特征之间空间关系的约束;该操作通过查询和候选图像的显著性来评估匹配特征的权重,通过阈值找到匹配特征的近邻,然后估计局部区域内所有匹配特征是否遵循一致的几何变换。我们通过匹配邻居到中心特征的相对象限来评估几何变换(局部象限约束,LQC)。实验表明,与其他视觉搜索方法相比,该方法取得了较好的改进效果。该方法对现有的视觉搜索方法有很好的补充作用,为图像空间信息的建模提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Saliency weight and local quadrant constraint for visual search
In recent years, the demand for directly visual searching based on images and videos becomes stronger and stronger. Most large-scale image retrieval systems are based on the Bag of Words (BoW) or its variant. For current visual search algorithms which are under the structure of BoW, there are two critical issues should be solved: the quantified visual words may reduce the discriminative power of the local features and the neglect of spatial relationship among local features. To address the problems, we propose a novel method based on saliency and local quadrant constraint. First, we introduce the saliency weights into the quantization stage of BoW. We utilize the image saliency to do inverse document (IDF) weighting. And while generating the histogram expression of image, we count the saliency of features instead of simply counting the number of features. Second, the saliency and the similarity characteristic of deformations in local areas are introduced into our model in the post-processing step to satisfy the constraint in spatial relationship among local features. The operation evaluates the weights of matching features by the saliency of query and candidate images, finds near neighbors of the matching features by a threshold and then estimates whether all the matching features in the local regions follow consistent geometric transformation or not. We evaluate the geometric transformation by the relative quadrant of the matching neighbors to center feature (Local Quadrant Constraint, LQC). Experiments show that the proposed method achieves promising improvement while comparing to other visual search methods. Our methods are well complementary to current visual search methods and give a new idea in modeling the spatial information of image.
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