Contents
2024
Volume: 6 Issue 5
16 Article(s)

EndNote (RIS)
BibTex
Plain Text
Export citation format
News and Commentaries
Reviews
Machine learning for perovskite optoelectronics: a review
Feiyue Lu, Yanyan Liang, Nana Wang, Lin Zhu, and Jianpu Wang
Metal halide perovskite materials have rapidly advanced in the perovskite solar cells and light-emitting diodes due to their superior optoelectronic properties. The structure of perovskite optoelectronic devices includes the perovskite active layer, electron transport layer, and hole transport layer. This indicates tha
Advanced Photonics
  • Publication Date: Aug. 27, 2024
  • Vol. 6, Issue 5, 054001 (2024)
Research Articles
Ultra-wide FOV meta-camera with transformer-neural-network color imaging methodology
Yan Liu, Wen-Dong Li, Kun-Yuan Xin, Ze-Ming Chen, Zun-Yi Chen, Rui Chen, Xiao-Dong Chen, Fu-Li Zhao, Wei-Shi Zheng, and Jian-Wen Dong
Planar cameras with high performance and wide field of view (FOV) are critical in various fields, requiring highly compact and integrated technology. Existing wide FOV metalenses show great potential for ultrathin optical components, but there is a set of tricky challenges, such as chromatic aberrations correction, cen
Advanced Photonics
  • Publication Date: May. 20, 2024
  • Vol. 6, Issue 5, 056001 (2024)
Authentication through residual attention-based processing of tampered optical responses | On the Cover
Blake Wilson, Yuheng Chen, Daksh Kumar Singh, Rohan Ojha, Jaxon Pottle, Michael Bezick, Alexandra Boltasseva, Vladimir M. Shalaev, and Alexander V. Kildishev
The global chip industry is grappling with dual challenges: a profound shortage of new chips and a surge of counterfeit chips valued at $75 billion, introducing substantial risks of malfunction and unwanted surveillance. To counteract this, we propose an optical anti-counterfeiting detection method for semiconductor de
Advanced Photonics
  • Publication Date: Jul. 17, 2024
  • Vol. 6, Issue 5, 056002 (2024)
Multiplane quantitative phase imaging using a wavelength-multiplexed diffractive optical processor
Che-Yung Shen, Jingxi Li, Yuhang Li, Tianyi Gan, Langxing Bai, Mona Jarrahi, and Aydogan Ozcan
Quantitative phase imaging (QPI) is a label-free technique that provides optical path length information for transparent specimens, finding utility in biology, materials science, and engineering. Here, we present QPI of a three-dimensional (3D) stack of phase-only objects using a wavelength-multiplexed diffractive opti
Advanced Photonics
  • Publication Date: Jul. 25, 2024
  • Vol. 6, Issue 5, 056003 (2024)
Superresolution imaging using superoscillatory diffractive neural networks
Hang Chen, Sheng Gao, Haiou Zhang, Zejia Zhao, Zhengyang Duan, Gordon Wetzstein, and Xing Lin
Optical superoscillation enables far-field superresolution imaging beyond diffraction limits. However, existing superoscillatory lenses for spatial superresolution imaging systems still confront critical performance limitations due to the lack of advanced design methods and limited design degree of freedom. Here, we pr
Advanced Photonics
  • Publication Date: Oct. 07, 2024
  • Vol. 6, Issue 5, 056004 (2024)
Diffraction casting
Ryosuke Mashiko, Makoto Naruse, and Ryoichi Horisaki
Optical computing is considered a promising solution for the growing demand for parallel computing in various cutting-edge fields that require high integration and high-speed computational capacity. We propose an optical computation architecture called diffraction casting (DC) for flexible and scalable parallel logic o
Advanced Photonics
  • Publication Date: Oct. 03, 2024
  • Vol. 6, Issue 5, 056005 (2024)
Nested deep transfer learning for modeling of multilayer thin films
Rohit Unni, Kan Yao, and Yuebing Zheng
Machine-learning techniques have gained popularity in nanophotonics research, being applied to predict optical properties, and inversely design structures. However, one limitation is the cost of acquiring training data, as complex structures require time-consuming simulations. To address this, researchers have explored
Advanced Photonics
  • Publication Date: Oct. 08, 2024
  • Vol. 6, Issue 5, 056006 (2024)
Large-scale optical programmable logic array for two-dimensional cellular automaton
Wenkai Zhang, Bo Wu, Wentao Gu, Junwei Cheng, Hailong Zhou, Dongmei Huang, Ping-kong Alexander Wai, Liao Chen, Wenchan Dong, Jianji Dong, and Xinliang Zhang
Despite more than 40 years of development, it remains difficult for optical logic computing to support more than four operands because the high parallelism of light has not been fully exploited in current methods that are restrained by inefficient optical nonlinearity and redundant input modulation. In this paper, we p
Advanced Photonics
  • Publication Date: Oct. 17, 2024
  • Vol. 6, Issue 5, 056007 (2024)
Versatile cascade migrating photon avalanches for full-spectrum extremely nonlinear emissions and super-resolution microscopy
Hui Wu, Binxiong Pan, Qi Zhao, Chenyi Wang, Rui Pu, Chang Liu, Zeheng Chen, Zewei Luo, Jing Huang, Wei Wei, Tongsheng Chen, and Qiuqiang Zhan
Photon avalanche occurring in lanthanide-doped materials exhibits a giant optical nonlinear response of the emission intensity to the excitation intensity, which holds great potential in the applications of optical sensing, super-resolution imaging, quantum detection, and other techniques. However, strategies for devel
Advanced Photonics
  • Publication Date: Sep. 18, 2024
  • Vol. 6, Issue 5, 056010 (2024)
Reconfigurable integrated photonic processor for NP-complete problems
Xiao-Yun Xu, Tian-Yu Zhang, Zi-Wei Wang, Chu-Han Wang, and Xian-Min Jin
Nondeterministic-polynomial-time (NP)-complete problems are widely involved in various real-life scenarios but are still intractable in being solved efficiently on conventional computers. It is of great practical significance to construct versatile computing architectures that solve NP-complete problems with computatio
Advanced Photonics
  • Publication Date: Sep. 24, 2024
  • Vol. 6, Issue 5, 056011 (2024)
Chip-scale nonlinear bandwidth enhancement via birefringent mode hybridization
Tingge Yuan, Jiangwei Wu, Xueyi Wang, Chengyu Chen, Hao Li, Bo Wang, Yuping Chen, and Xianfeng Chen
Advanced Photonics
  • Publication Date: Sep. 18, 2024
  • Vol. 6, Issue 5, 056012 (2024)

About the Cover

Recently, researchers invented an optical counterfeit detection method that leverages deep learning to identify adversarial tampering in chips: residual attention-based processing of tampered optical responses (RAPTOR). RAPTOR is capable of identifying adversarial tampering to optical PUFs based on randomly patterned arrays of gold nanoparticles. Offering robustness against various adversarial attacks, RAPTOR demonstrates great potential for AI in the semiconductor industry.

本页面的js