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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Deep-seated features histogram: A novel image retrieval method
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Deep-seated features histogram: A novel image retrieval method

机译:深度座位特征直方图:一种新颖的图像检索方法

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摘要

Low-level features and deep features each have their own advantages and disadvantages in image representation. However, combining their advantages within a CBIR framework remains challenging. To address this problem, we propose a novel image-retrieval method: the deep-seated features histogram (DSFH). Its main highlights are: 1) Low-level features are extracted by simulating the human orientation selection and color perception mechanisms. This follows the human habit of looking at conspicuous regions and then less-conspicuous ones. 2) A novel method, ranking whitening , is proposed for extracting deep features via low-level features and combining them to obtain deep-seated features. 3) The proposed method is straightforward and reduces the vector dimensionality of the FC7 layer of a pre-trained VGG-16 network, and significantly improves image-retrieval precision. Comparative experiments demonstrate that the proposed method outperforms several state-of-the-art methods, including low-level feature-based, deep feature-based, and fused feature-based methods, in terms of precision/recall, area under the precision/recall curve metrics, and mean average precision. The proposed method provides efficient CBIR performance and not only has the power to discriminate low-level features, including color, texture, and shape, but can also match scenes of similar style.
机译:低层特征和深层特征在图像表示中各有优缺点。然而,在CBIR框架内结合它们的优势仍然具有挑战性。为了解决这个问题,我们提出了一种新的图像检索方法:深层特征直方图(DSFH)。其主要特点是:1)通过模拟人类的方向选择和颜色感知机制,提取低层特征。这遵循了人类的习惯:先看显眼的区域,然后再看不那么显眼的区域。2) 提出了一种新的排序白化方法,通过低层特征提取深层特征,并将它们结合起来获得深层特征。3) 该方法简单易行,降低了预训练VGG-16网络FC7层的向量维数,显著提高了图像检索精度。对比实验表明,该方法在精度/召回率、精度/召回曲线下面积和平均精度方面优于几种最先进的方法,包括基于低级特征、基于深度特征和基于融合特征的方法。该方法提供了高效的CBIR性能,不仅能够区分颜色、纹理和形状等低级特征,而且能够匹配相似风格的场景。

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