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Hybrid Histogram Descriptor: A Fusion Feature Representation for Image Retrieval

机译:混合直方图描述符:用于图像检索的融合特征表示

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摘要

Currently, visual sensors are becoming increasingly affordable and fashionable, acceleratingly the increasing number of image data. Image retrieval has attracted increasing interest due to space exploration, industrial, and biomedical applications. Nevertheless, designing effective feature representation is acknowledged as a hard yet fundamental issue. This paper presents a fusion feature representation called a hybrid histogram descriptor (HHD) for image retrieval. The proposed descriptor comprises two histograms jointly: a perceptually uniform histogram which is extracted by exploiting the color and edge orientation information in perceptually uniform regions; and a motif co-occurrence histogram which is acquired by calculating the probability of a pair of motif patterns. To evaluate the performance, we benchmarked the proposed descriptor on RSSCN7, AID, Outex-00013, Outex-00014 and ETHZ-53 datasets. Experimental results suggest that the proposed descriptor is more effective and robust than ten recent fusion-based descriptors under the content-based image retrieval framework. The computational complexity was also analyzed to give an in-depth evaluation. Furthermore, compared with the state-of-the-art convolutional neural network (CNN)-based descriptors, the proposed descriptor also achieves comparable performance, but does not require any training process.
机译:当前,视觉传感器变得越来越便宜和时髦,从而加速了图像数据的数量。由于空间探索,工业和生物医学应用,图像检索引起了越来越多的兴趣。然而,设计有效的特征表示被认为是一个困难而基本的问题。本文提出了一种用于图像检索的融合特征表示方法,称为混合直方图描述符(HHD)。所提出的描述符共同包括两个直方图:一个感知均匀的直方图,它是通过利用感知均匀区域中的颜色和边缘方向信息来提取的;通过计算一对图案图案的概率而获得的图案同时出现直方图。为了评估性能,我们在RSSCN7,AID,Outex-00013,Outex-00014和ETHZ-53数据集上对建议的描述符进行了基准测试。实验结果表明,在基于内容的图像检索框架下,提出的描述符比十个最近的基于融合的描述符更有效,更健壮。还分析了计算复杂性,以进行深入评估。此外,与基于最新的卷积神经网络(CNN)的描述符相比,所提出的描述符还具有可比的性能,但不需要任何训练过程。

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