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Image Retrieval with Semantic Sketches

机译:带有语义草图的图像检索

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摘要

With increasingly large image databases, searching in them becomes an ever more difficult endeavor. Consequently, there is a need for advanced tools for image retrieval in a webscale context. Searching by tags becomes intractable in such scenarios as large numbers of images will correspond to queries such as "car and house and street". We present a novel approach that allows a user to search for images based on semantic sketches that describe the desired composition of the image. Our system operates on images with labels for a few high-level object categories, allowing us to search very fast with a minimal memory footprint. We employ a structure similar to random decision forests which avails a data-driven partitioning of the image space providing a search in logarithmic time with respect to the number of images. This makes our system applicable for large scale image search problems. We performed a user study that demonstrates the validity and usability of our approach.
机译:随着越来越大的图像数据库,在其中搜索变得越来越困难。因此,需要用于网络规模上下文中的图像检索的高级工具。在大量的图像将对应于诸如“汽车,房屋和街道”之类的查询的情况下,通过标签进行搜索变得棘手。我们提出了一种新颖的方法,该方法允许用户根据描述图像所需组成的语义草图搜索图像。我们的系统在带有一些高级对象类别标签的图像上运行,从而使我们能够以最小的内存占用空间进行快速搜索。我们采用类似于随机决策森林的结构,该结构利用图像空间的数据驱动分区来提供相对于图像数量的对数时间搜索。这使我们的系统适用于大规模图像搜索问题。我们进行了一项用户研究,证明了我们方法的有效性和可用性。

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