IEEE J Biomed Health Inform. 2024 Mar;28(3):1611-1622. doi: 10.1109/JBHI.2023.3316468. Epub 2024 Mar 6.
Internet of Medical Things (IoMT) and telemedicine technologies utilize computers, communications, and medical devices to facilitate off-site exchanges between specialists and patients, specialists, and medical staff. If the information communicated in IoMT is illegally steganography, tampered or leaked during transmission and storage, it will directly impact patient privacy or the consultation results with possible serious medical incidents. Steganalysis is of great significance for the identification of medical images transmitted illegally in IoMT and telemedicine. In this article, we propose a Residual and Enhanced Discriminative Network (RED-Net) for image steganalysis in the internet of medical things and telemedicine. RED-Net consists of a steganographic information enhancement module, a deep residual network, and steganographic information discriminative mechanism. Specifically, a steganographic information enhancement module is adopted by the RED-Net to boost the illegal steganographic signal in texturally complex high-dimensional medical image features. A deep residual network is utilized for steganographic feature extraction and compression. A steganographic information discriminative mechanism is employed by the deep residual network to enable it to recalibrate the steganographic features and drop high-frequency features that are mistaken for steganographic information. Experiments conducted on public and private datasets with data hiding payloads ranging from 0.1bpp/bpnzac-0.5bpp/bpnzac in the spatial and JPEG domain led to RED-Net's steganalysis error P in the range of 0.0732-0.0010 and 0.231-0.026, respectively. In general, qualitative and quantitative results on public and private datasets demonstrate that the RED-Net outperforms 8 state-of-art steganography detectors.
物联网医疗(IoMT)和远程医疗技术利用计算机、通信和医疗设备,促进专家与患者、专家与医务人员之间的异地交流。如果 IoMT 中传输的信息是非法隐写术、在传输和存储过程中被篡改或泄露,将直接影响患者隐私或与可能发生严重医疗事故的咨询结果。隐写分析对于识别 IoMT 和远程医疗中非法传输的医学图像具有重要意义。本文提出了一种用于物联网医疗和远程医疗图像隐写分析的残余增强判别网络(RED-Net)。RED-Net 由隐写信息增强模块、深度残差网络和隐写信息判别机制组成。具体来说,RED-Net 采用隐写信息增强模块来增强纹理复杂的高维医学图像特征中的非法隐写信号。深度残差网络用于隐写特征提取和压缩。深度残差网络采用隐写信息判别机制,使它能够重新校准隐写特征,并丢弃被误认为隐写信息的高频特征。在公共和私有数据集上进行了实验,数据隐藏有效负载范围为 0.1bpp/bpnzac-0.5bpp/bpnzac,在空间域和 JPEG 域中的隐写分析错误率 P 分别在 0.0732-0.0010 和 0.231-0.026 范围内。总体而言,公共和私有数据集的定性和定量结果表明,RED-Net 优于 8 种最先进的隐写检测算法。