使用对象草图查询自适应实例搜索

S. Bhattacharjee, Junsong Yuan, Weixiang Hong, Xiang Ruan
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引用次数: 24

摘要

基于草图的对象搜索是一个具有挑战性的问题,主要有两个难点:(1)如何将二值草图查询与彩色图像进行匹配;(2)如何利用草图查询在大图像中定位小对象。为了解决上述挑战,我们建议利用对象建议进行对象搜索和定位。但是,我们建议在单纯依赖草图特征(如sketch -a- net)来定位候选对象建议的基础上,充分利用外观信息来解决对象建议之间的歧义,从而优化搜索结果。我们提出的查询自适应搜索是一个子图选择问题,可以用最大流量算法来解决。通过使用更小的一组更显著的匹配作为查询代表来执行查询扩展,它可以在杂乱的背景或密集绘制的变形密集的漫画(Manga like)图像中准确定位小目标对象。我们在基准数据集上的基于查询自适应草图的对象搜索与现有方法相比表现出更好的性能,这验证了同时利用形状和外观特征进行基于草图的搜索的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Query Adaptive Instance Search using Object Sketches
Sketch-based object search is a challenging problem mainly due to two difficulties: (1) how to match the binary sketch query with the colorful image, and (2) how to locate the small object in a big image with the sketch query. To address the above challenges, we propose to leverage object proposals for object search and localization. However, instead of purely relying on sketch features, e.g., Sketch-a-Net, to locate the candidate object proposals, we propose to fully utilize the appearance information to resolve the ambiguities among object proposals and refine the search results. Our proposed query adaptive search is formulated as a sub-graph selection problem, which can be solved by maximum flow algorithm. By performing query expansion using a smaller set of more salient matches as the query representatives, it can accurately locate the small target objects in cluttered background or densely drawn deformation intensive cartoon (Manga like) images. Our query adaptive sketch based object search on benchmark datasets exhibits superior performance when compared with existing methods, which validates the advantages of utilizing both the shape and appearance features for sketch-based search.
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