Aggregating Local Deep Features for Image Retrieval

Artem Babenko, V. Lempitsky
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引用次数: 82

Abstract

Several recent works have shown that image descriptors produced by deep convolutional neural networks provide state-of-the-art performance for image classification and retrieval problems. It also has been shown that the activations from the convolutional layers can be interpreted as local features describing particular image regions. These local features can be aggregated using aggregating methods developed for local features (e.g. Fisher vectors), thus providing new powerful global descriptor. In this paper we investigate possible ways to aggregate local deep features to produce compact descriptors for image retrieval. First, we show that deep features and traditional hand-engineered features have quite different distributions of pairwise similarities, hence existing aggregation methods have to be carefully re-evaluated. Such re-evaluation reveals that in contrast to shallow features, the simple aggregation method based on sum pooling provides the best performance for deep convolutional features. This method is efficient, has few parameters, and bears little risk of overfitting when e.g. learning the PCA matrix. In addition, we suggest a simple yet efficient query expansion scheme suitable for the proposed aggregation method. Overall, the new compact global descriptor improves the state-of-the-art on four common benchmarks considerably.
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基于局部深度特征的图像检索
最近的一些研究表明,由深度卷积神经网络产生的图像描述符为图像分类和检索问题提供了最先进的性能。研究还表明,来自卷积层的激活可以解释为描述特定图像区域的局部特征。这些局部特征可以使用针对局部特征开发的聚合方法(例如Fisher向量)进行聚合,从而提供新的强大的全局描述符。在本文中,我们研究了聚合局部深度特征以产生用于图像检索的紧凑描述符的可能方法。首先,我们发现深度特征和传统的手工设计特征具有完全不同的成对相似度分布,因此必须仔细重新评估现有的聚合方法。这样的重新评估表明,与浅层特征相比,基于和池的简单聚合方法对深度卷积特征提供了最好的性能。该方法效率高,参数少,在学习主成分分析矩阵时也不会出现过拟合的风险。此外,我们还提出了一种简单而有效的查询扩展方案,适用于所提出的聚合方法。总的来说,新的紧凑全局描述符在四个常见基准测试上显著提高了最新水平。
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