Chen Jieting, Qian Chao, Zhang Jie, Jia Yuetian, Chen Hongsheng
ZJU-UIUC Institute, Interdisciplinary Center for Quantum Information, State Key Laboratory of Extreme Photonics and Instrumentation, Zhejiang University, 310027, Hangzhou, China.
ZJU-Hangzhou Global Science and Technology Innovation Center, Key Laboratory of Advanced Micro/Nano Electronic Devices & Smart Systems of Zhejiang, Zhejiang University, 310027, Hangzhou, China.
Nat Commun. 2023 Aug 12;14(1):4872. doi: 10.1038/s41467-023-40619-w.
Inferring optical response from other correlated optical response is highly demanded for vast applications such as biological imaging, material analysis, and optical characterization. This is distinguished from widely-studied forward and inverse designs, as it is boiled down to another different category, namely, spectra-to-spectra design. Whereas forward and inverse designs have been substantially explored across various physical scenarios, the spectra-to-spectra design remains elusive and challenging as it involves intractable many-to-many correspondences. Here, we first dabble in this uncharted area and propose a generation-elimination framework that can self-orient to the best output candidate. Such a framework has a strong built-in stochastically sampling capability that automatically generate diverse nominations and eliminate inferior nominations. As an example, we study terahertz metasurfaces to correlate the reflection spectra from low to high frequencies, where the inaccessible spectra are precisely forecasted without consulting structural information, reaching an accuracy of 98.77%. Moreover, an innovative dimensionality reduction approach is executed to visualize the distribution of the abstract correlated spectra data encoded in latent spaces. These results provide explicable perspectives for deep learning to parse complex physical processes, rather than "brute-force" black box, and facilitate versatile applications involving cross-wavelength information correlation.
从其他相关光学响应推断光学响应在生物成像、材料分析和光学表征等众多应用中有着迫切需求。这与广泛研究的正向和逆向设计不同,因为它可归结为另一个不同的类别,即光谱到光谱设计。虽然正向和逆向设计已在各种物理场景中得到了大量探索,但光谱到光谱设计仍然难以捉摸且具有挑战性,因为它涉及棘手的多对多对应关系。在此,我们首次涉足这一未知领域,并提出了一种生成 - 消除框架,该框架可以自我导向到最佳输出候选。这样的框架具有强大的内置随机采样能力,可自动生成各种提名并消除劣质提名。例如,我们研究太赫兹超表面以关联从低频到高频的反射光谱,其中无需参考结构信息就能精确预测无法获取的光谱,准确率达到98.77%。此外,还执行了一种创新的降维方法来可视化编码在潜在空间中的抽象相关光谱数据的分布。这些结果为深度学习解析复杂物理过程提供了可解释的视角,而不是“蛮力”黑箱,并促进了涉及跨波长信息关联的多种应用。