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Deep Convolutional Neural Networks and Maximum-Likelihood Principle in Approximate Nearest Neighbor Search

机译:近似邻近搜索中的深度卷积神经网络和最大似然原理

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Deep convolutional neural networks are widely used to extract high-dimensional features in various image recognition tasks. If the count of classes is relatively large, performance of the classifier for such features can be insufficient to be implemented in real-time applications, e.g., in video-based recognition. In this paper we propose the novel approximate nearest neighbor algorithm, which sequentially chooses the next instance from the database, which corresponds to the maximal likelihood (joint density) of distances to previously checked instances. The Gaussian approximation of the distribution of dissimilarity measure is used to estimate this likelihood. Experimental study results in face identification with LFW and YTF datasets are presented. It is shown that the proposed algorithm is much faster than an exhaustive search and several known approximate nearest neighbor methods.
机译:深度卷积神经网络广泛用于提取各种图像识别任务中的高维特征。如果类的计数相对较大,则这些特征的分类器的性能可能不足以在基于视频识别中的实时应用中的实时应用中实现。在本文中,我们提出了新的近似最近邻算法,该近似邻算法顺序地从数据库中选择下一个实例,这对应于与先前检查的实例的距离的最大似然(关节密度)对应。不相似度量分布的高斯近似用于估计这种可能性。提出了使用LFW和YTF数据集的面部识别实验研究。结果表明,所提出的算法比穷定的搜索和几个已知的近似邻居方法快得多。

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