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Randomized Spatial Context for Object Search

机译:用于对象搜索的随机空间上下文

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摘要

Searching visual objects in large image or video data sets is a challenging problem, because it requires efficient matching and accurate localization of query objects that often occupy a small part of an image. Although spatial context has been shown to help produce more reliable detection than methods that match local features individually, how to extract appropriate spatial context remains an open problem. Instead of using fixed-scale spatial context, we propose a randomized approach to deriving spatial context, in the form of spatial random partition. The effect of spatial context is achieved by averaging the matching scores over multiple random patches. Our approach offers three benefits: 1) the aggregation of the matching scores over multiple random patches provides robust local matching; 2) the matched objects can be directly identified on the pixelwise confidence map, which results in efficient object localization; and 3) our algorithm lends itself to easy parallelization and also allows a flexible tradeoff between accuracy and speed through adjusting the number of partition times. Both theoretical studies and experimental comparisons with the state-of-the-art methods validate the advantages of our approach.
机译:在大图像或视频数据集中搜索视觉对象是一个具有挑战性的问题,因为它需要有效地匹配并精确定位通常只占图像一小部分的查询对象。尽管已显示空间上下文比单独匹配局部特征的方法可以帮助产生更可靠的检测,但是如何提取适当的空间上下文仍然是一个悬而未决的问题。代替使用固定尺度的空间上下文,我们提出了一种以空间随机分区的形式导出空间上下文的随机方法。通过对多个随机面片上的匹配分数求平均来实现空间上下文的效果。我们的方法提供了三个好处:1)多个随机补丁上匹配分数的汇总提供了可靠的局部匹配; 2)可以在像素置信度图上直接识别匹配的对象,从而实现高效的对象定位;和3)我们的算法很容易实现并行化,并且还可以通过调整分区次数在灵活性和准确性之间进行权衡。理论研究和最先进方法的实验比较都证明了我们方法的优势。

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