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首页> 外文期刊>International journal of machine learning and cybernetics >Weighted multi-deep ranking supervised hashing for efficient image retrieval
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Weighted multi-deep ranking supervised hashing for efficient image retrieval

机译:加权多深度排序监督散列,可有效检索图像

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摘要

Deep hashing has proven to be efficient and effective for large-scale image retrieval due to the strong representation capability of deep networks. Existing deep hashing methods only utilize a single deep hash table. In order to achieve both higher retrieval recall and precision, longer hash codes can be used but at the expense of higher space usage. To address this issue, a novel deep hashing method is proposed in this paper, weighted multi-deep ranking supervised hashing (WMDRH), which employs multiple weighted deep hash tables to improve precision/recall without increasing space usage. The hash table is constructed as an additional layer in a deep network. Hash codes are generated by minimizing the loss function that contains two terms: (1) the ranking pairwise loss and (2) the classification loss. The ranking pairwise loss ensures to generate discriminative hash codes by penalizing more for the (dis)similar image pairs with (small)large Hamming distances. The classification loss guarantees the hash codes to be effective for category prediction. Different hash bits in each individual hash table are treated differently by assigning corresponding weights based on information preservation and bit diversity. Moreover, multiple hash tables are integrated by assigning the appropriate weight to each table according to its mean average precision (MAP) score for image retrieval. Experiments on three widely-used image databases show the proposed method outperforms state-of-the-art hashing methods.
机译:由于深度网络的强大表示能力,深度散列已被证明对于大规模图像检索是有效的。现有的深度哈希方法仅利用单个深度哈希表。为了实现更高的检索召回率和精度,可以使用更长的哈希码,但要以占用更多空间为代价。为了解决这个问题,本文提出了一种新颖的深度哈希方法,即加权多深度排序监督哈希(WMDRH),它采用多个加权深度哈希表来提高精度/调用率,而不会增加空间使用量。哈希表被构造为深度网络中的附加层。通过最小化包含两个项的损失函数来生成哈希码:(1)排名对损失和(2)分类损失。等级成对损失确保通过对具有(小)大汉明距离的(不同)相似图像对进行更多惩罚,从而生成判别性哈希码。分类损失保证了哈希码对于类别预测是有效的。通过基于信息保留和位分集分配相应的权重,可以对每个单独的哈希表中的不同哈希位进行不同的处理。而且,通过根据图像的平均平均精度(MAP)得分为每个表分配适当的权重,可以集成多个哈希表。在三个广泛使用的图像数据库上进行的实验表明,该方法优于最新的哈希方法。

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