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深度学习与压缩域特征融合的基于内容的图像检索。

Fusion of Deep Learning and Compressed Domain Features for Content-Based Image Retrieval.

出版信息

IEEE Trans Image Process. 2017 Dec;26(12):5706-5717. doi: 10.1109/TIP.2017.2736343. Epub 2017 Aug 29.

Abstract

This paper presents an effective image retrieval method by combining high-level features from convolutional neural network (CNN) model and low-level features from dot-diffused block truncation coding (DDBTC). The low-level features, e.g., texture and color, are constructed by vector quantization -indexed histogram from DDBTC bitmap, maximum, and minimum quantizers. Conversely, high-level features from CNN can effectively capture human perception. With the fusion of the DDBTC and CNN features, the extended deep learning two-layer codebook features is generated using the proposed two-layer codebook, dimension reduction, and similarity reweighting to improve the overall retrieval rate. Two metrics, average precision rate and average recall rate (ARR), are employed to examine various data sets. As documented in the experimental results, the proposed schemes can achieve superior performance compared with the state-of-the-art methods with either low-or high-level features in terms of the retrieval rate. Thus, it can be a strong candidate for various image retrieval related applications.

摘要

本文提出了一种有效的图像检索方法,该方法结合了来自卷积神经网络(CNN)模型的高层特征和来自点扩散块截断编码(DDBTC)的底层特征。底层特征,例如纹理和颜色,是通过从 DDBTC 位图、最大值和最小值量化器的矢量量化索引直方图构建的。相反,来自 CNN 的高层特征可以有效地捕捉人类的感知。通过 DDBTC 和 CNN 特征的融合,使用所提出的两层码本、降维和相似性重新加权生成扩展的深度学习两层码本特征,以提高整体检索率。采用平均精度率和平均召回率(ARR)两种指标来检验各种数据集。实验结果表明,与仅使用低层次或高层次特征的现有最先进方法相比,所提出的方案在检索率方面具有优异的性能。因此,它可以成为各种与图像检索相关的应用的有力候选者。

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