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Speeding Up Active Relevance Feedback with Approximate kNN Retrieval for Hyperplane Queries

机译:通过近似kNN检索来加速针对超平面查询的主动相关反馈

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In content-based image retrieval, relevance feedback (RF) is a prominent method for reducing the "semantic gap" between the low-level features describing the content and the usually higher-level meaning of user's target. Recent RF methods are able to identify complex target classes after relatively few feedback iterations. However, because the computational complexity of such methods is linear in the size of the database, retrieval can be quite slow on very large databases. To address this scalability issue for active learning-based RF, we put forward a method that consists in the construction of an index in the feature space associated to a kernel function and in performing approximate MMN hyperplane queries with this feature space index. The experimental evaluation performed on two image databases show that a significant speedup can be achieved at the expense of a limited increase in the number of feedback rounds.
机译:在基于内容的图像检索中,相关性反馈(RF)是一种用于减少描述内容的低级特征与用户目标通常较高级含义之间的“语义鸿沟”的重要方法。最近的射频方法能够在相对较少的反馈迭代后识别复杂的目标类别。但是,由于此类方法的计算复杂度在数据库大小上呈线性关系,因此在非常大的数据库上检索可能会非常缓慢。为了解决基于主动学习的RF的可伸缩性问题,我们提出了一种方法,该方法包括在与内核功能关联的特征空间中构造索引,以及使用该特征空间索引执行近似MMN超平面查询。在两个图像数据库上进行的实验评估表明,以有限的反馈回合数增加为代价,可以实现显着的加速。

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