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Wide-field imaging and recognition through cascaded complex scattering media

Version 2 2024-08-01, 18:51
Version 1 2024-08-01, 18:51
Posted on 2024-08-01 - 18:51
Considering the obvious application value in the field of minimally invasive and non-destructive clinical healthcare, we explore the challenge of wide-field imaging and recognition through cascaded complex scattering media, a topic that has been less researched, by realizing wide-field imaging and pathological screening through multimode fibers (MMF) and turbid media. To address the challenge to extract features from chaotic and globally correlated speckles formed by transmitting images through cascaded complex scattering media, we establish a deep learning approach based on SMixerNet. By efficiently using the parameter-free matrix transposition, SMixerNet achieve a broad receptive field with less inductive bias through concise fully Multi-layer Perceptron (MLP). This approach circumvents the parameters intensive requirements of previous implementations relying on self-attention mechanisms for global receptive fields. Imaging and pathological screening results based on extensive datasets demonstrate that our approach achieves better performance with fewer learning parameters, which helps deploy deep learning model on desktop-level edge computing devices for clinical healthcare. Our research shows that, deep learning facilitates imaging and recognition through cascaded complex scattering media. This research extends the scenarios of medical and industrial imaging, offering additional possibility in minimally invasive and non-destructive clinical healthcare and industrial monitoring in harsh and complex scenarios.

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AUTHORS (6)

Hailong Zhang
Lele Wang
Qirong Xiao
Jianshe Ma
Yi Zhao
Mali Gong

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