快速多分辨率图像查询

Charles E. Jacobs, Adam Finkelstein, D. Salesin
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引用次数: 843

摘要

我们提出了一种使用与预期目标相似的查询图像在图像数据库中进行搜索的方法。查询图像可以是要检索的图像的手绘草图或(可能是低质量的)扫描。我们的搜索算法利用查询图像和数据库图像的多分辨率小波分解。这些分解的系数被提炼成每个图像的小“签名”。我们引入了一个对这些签名进行操作的“图像查询度量”。这个度量本质上比较查询与潜在目标有多少个重要的小波系数。该度量包括可以使用统计分析来调整的参数,以适应在不同类型的图像查询中发现的各种图像失真。生成的算法很简单,只需要很少的签名数据库存储开销,并且速度足够快,可以在绘制查询草图时以交互速率(在标准桌面机器上)在包含20,000张图像的数据库上执行。我们在包含1000和20,000张图像的数据库中对数百个查询进行的实验显示,与使用传统的L1、L2或颜色直方图规范相比,在速度和成功率方面都有了显著提高。CR
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast multiresolution image querying
We present a method for searching in an image database using a query image that is similar to the intended target. The query image may be a hand-drawn sketch or a (potentially low-quality) scan of the image to be retrieved. Our searching algorithm makes use of multiresolution wavelet decompositions of the query and database images. The coefficients of these decompositions are distilled into small “signatures” for each image. We introduce an “image querying metric” that operates on these signatures. This metric essentially compares how many significant wavelet coefficients the query has in common with potential targets. The metric includes parameters that can be tuned, using a statistical analysis, to accommodate the kinds of image distortions found in different types of image queries. The resulting algorithm is simple, requires very little storage overhead for the database of signatures, and is fast enough to be performed on a database of 20,000 images at interactive rates (on standard desktop machines) as a query is sketched. Our experiments with hundreds of queries in databases of 1000 and 20,000 images show dramatic improvement, in both speed and success rate, over using a conventional L1, L2, or color histogram norm. CR
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