School of Cyber Science and Technology, Beihang University, Beijing 100191, China.
School of Electronic and Information Engineering, Beihang University, Beijing 100191, China.
Sensors (Basel). 2020 Oct 5;20(19):5673. doi: 10.3390/s20195673.
Metamaterials, artificially engineered structures with extraordinary physical properties, offer multifaceted capabilities in interdisciplinary fields. To address the looming threat of stealthy monitoring, the detection and identification of metamaterials is the next research frontier but have not yet been explored. Here, we show that the crypto-oriented convolutional neural network (CNN) makes possible the secure intelligent detection of metamaterials in mixtures. Terahertz signals were encrypted by homomorphic encryption and the ciphertext was submitted to the CNN directly for results, which can only be decrypted by the data owner. The experimentally measured terahertz signals were augmented and further divided into training sets and test sets using 5-fold cross-validation. Experimental results illustrated that the model achieved an accuracy of 100% on the test sets, which highly outperformed humans and the traditional machine learning. The CNN took 9.6 s to inference on 92 encrypted test signals with homomorphic encryption backend. The proposed method with accuracy and security provides private preserving paradigm for artificial intelligence-based material identification.
超材料是一种具有特殊物理性质的人工工程结构,在多个学科领域具有多方面的功能。为了解决隐形监控的迫在眉睫的威胁,对超材料的检测和识别是下一个研究前沿,但尚未得到探索。在这里,我们展示了面向加密的卷积神经网络(CNN)可以安全地智能检测混合物中的超材料。太赫兹信号通过同态加密进行加密,并将密文直接提交给 CNN 以获得结果,只有数据所有者才能解密。使用 5 倍交叉验证对实验测量的太赫兹信号进行扩充,并进一步分为训练集和测试集。实验结果表明,该模型在测试集上的准确率达到了 100%,大大超过了人类和传统机器学习。具有同态加密后端的 CNN 对 92 个加密测试信号进行推断需要 9.6 秒。该方法具有准确性和安全性,为基于人工智能的材料识别提供了隐私保护范例。