[Cross modal medical image online hash retrieval based on online semantic similarity].

Q4 Medicine
Qinghai Liu, Lun Tang, Qianlin Wu, Liming Xu, Qianbin Chen
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引用次数: 0

Abstract

Online hashing methods are receiving increasing attention in cross modal medical image retrieval research. However, existing online methods often lack the learning ability to maintain semantic correlation between new and existing data. To this end, we proposed online semantic similarity cross-modal hashing (OSCMH) learning framework to incrementally learn compact binary hash codes of medical stream data. Within it, a sparse representation of existing data based on online anchor datasets was designed to avoid semantic forgetting of the data and adaptively update hash codes, which effectively maintained semantic correlation between existing and arriving data and reduced information loss as well as improved training efficiency. Besides, an online discrete optimization method was proposed to solve the binary optimization problem of hash code by incrementally updating hash function and optimizing hash code on medical stream data. Compared with existing online or offline hashing methods, the proposed algorithm achieved average retrieval accuracy improvements of 12.5% and 14.3% on two datasets, respectively, effectively enhancing the retrieval efficiency in the field of medical images.

[基于在线语义相似度的跨模态医学图像在线哈希检索]。
在线哈希方法在跨模态医学图像检索研究中越来越受到重视。然而,现有的在线方法往往缺乏保持新数据和现有数据之间语义相关性的学习能力。为此,我们提出了在线语义相似跨模态哈希(OSCMH)学习框架,增量学习医疗流数据的紧凑二进制哈希码。其中,基于在线锚数据集设计了现有数据的稀疏表示,避免了数据的语义遗忘,并自适应更新哈希码,有效地保持了现有数据与到达数据之间的语义相关性,减少了信息丢失,提高了训练效率。此外,提出了一种在线离散优化方法,通过增量更新哈希函数和优化医疗流数据的哈希码来解决哈希码的二进制优化问题。与现有的在线和离线哈希方法相比,本文算法在两个数据集上的平均检索精度分别提高了12.5%和14.3%,有效地提高了医学图像领域的检索效率。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
期刊介绍:
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