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On Combining Sequence Alignment and Feature-Quantization for Sub-Image Searching

机译:子图像搜索结合序列比对和特征量化

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The availability of various photo archives and photo sharing systems made similarity searching much more important because the photos are not usually conveniently tagged. So the photos (images) need to be searched by their content. Moreover, it is important not only to compare images with a query holistically but also to locate images that contain the query as their part. The query can be a picture of a person, building, or an abstract object and the task is to retrieve images of the query object but from a different perspective or images capturing a global scene containing the query object. This retrieval is called the sub-image searching. In this paper, the authors propose an algorithm, called SASISA, for retrieving database images by their similarity to and containment of a query. The novelty of it lies in application of a sequence alignment algorithm, which is commonly used in text retrieval. This forms an orthogonal solution to currently used approaches based on inverted files. They improve efficiency of SASISA by applying vector-quantization of local image feature descriptors. The proposed algorithm and its optimization are evaluated on a real-life data set containing photographs where images of logos are searched. It is compared to a state-of-the-art method (Joly & Buisson, 2009) and the improvement of 16% in mean average precision (mAP) is obtained.
机译:由于通常不方便标记照片,因此各种照片档案和照片共享系统的可用性使相似性搜索变得更加重要。因此,需要按其内容搜索照片(图像)。此外,重要的是不仅要整体比较图像和查询,而且还要找到包含查询的图像。查询可以是人,建筑物或抽象对象的图片,任务是从不同的角度检索查询对象的图像或捕获包含查询对象的全局场景的图像。这种检索称为子图像搜索。在本文中,作者提出了一种称为SASISA的算法,用于通过与查询的相似性和对查询的包含来检索数据库映像。它的新颖之处在于应用了序列比对算法,该算法通常在文本检索中使用。这形成了基于反向文件的当前使用方法的正交解决方案。它们通过对局部图像特征描述符进行矢量量化来提高SASISA的效率。在包含照片(其中搜索徽标图像)的真实生活数据集上评估提出的算法及其优化。将其与最新方法进行比较(Joly&Buisson,2009),平均平均精度(mAP)提高了16%。

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