Search Results for author: Md Sadman Sakib Rahman

Found 6 papers, 0 papers with code

Subwavelength Imaging using a Solid-Immersion Diffractive Optical Processor

no code implementations17 Jan 2024 Jingtian Hu, Kun Liao, Niyazi Ulas Dinc, Carlo Gigli, Bijie Bai, Tianyi Gan, Xurong Li, Hanlong Chen, Xilin Yang, Yuhang Li, Cagatay Isil, Md Sadman Sakib Rahman, Jingxi Li, Xiaoyong Hu, Mona Jarrahi, Demetri Psaltis, Aydogan Ozcan

To resolve subwavelength features of an object, the diffractive imager uses a thin, high-index solid-immersion layer to transmit high-frequency information of the object to a spatially-optimized diffractive encoder, which converts/encodes high-frequency information of the input into low-frequency spatial modes for transmission through air.

Decoder

Complex-valued universal linear transformations and image encryption using spatially incoherent diffractive networks

no code implementations5 Oct 2023 Xilin Yang, Md Sadman Sakib Rahman, Bijie Bai, Jingxi Li, Aydogan Ozcan

Similarly, D2NNs can also perform arbitrary linear intensity transformations with spatially incoherent illumination; however, under spatially incoherent light, these transformations are non-negative, acting on diffraction-limited optical intensity patterns at the input field-of-view (FOV).

Learning Diffractive Optical Communication Around Arbitrary Opaque Occlusions

no code implementations20 Apr 2023 Md Sadman Sakib Rahman, Tianyi Gan, Emir Arda Deger, Cagatay Isil, Mona Jarrahi, Aydogan Ozcan

In this scheme, an electronic neural network encoder and a diffractive optical network decoder are jointly trained using deep learning to transfer the optical information or message of interest around the opaque occlusion of an arbitrary shape.

Decoder

Universal Linear Intensity Transformations Using Spatially-Incoherent Diffractive Processors

no code implementations23 Mar 2023 Md Sadman Sakib Rahman, Xilin Yang, Jingxi Li, Bijie Bai, Aydogan Ozcan

Under spatially-coherent light, a diffractive optical network composed of structured surfaces can be designed to perform any arbitrary complex-valued linear transformation between its input and output fields-of-view (FOVs) if the total number (N) of optimizable phase-only diffractive features is greater than or equal to ~2 Ni x No, where Ni and No refer to the number of useful pixels at the input and the output FOVs, respectively.

Time-lapse image classification using a diffractive neural network

no code implementations23 Aug 2022 Md Sadman Sakib Rahman, Aydogan Ozcan

Here we demonstrate, for the first time, a "time-lapse" image classification scheme using a diffractive network, significantly advancing its classification accuracy and generalization performance on complex input objects by using the lateral movements of the input objects and/or the diffractive network, relative to each other.

Classification Image Classification +1

Ensemble learning of diffractive optical networks

no code implementations15 Sep 2020 Md Sadman Sakib Rahman, Jingxi Li, Deniz Mengu, Yair Rivenson, Aydogan Ozcan

A plethora of research advances have emerged in the fields of optics and photonics that benefit from harnessing the power of machine learning.

BIG-bench Machine Learning Classification +4

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