# Senses-speckle [Remote Photonic Detection of Human Senses Using Secondary Speckle Patterns](https://doi.org/10.21203/rs.3.rs-724587/v1) paper Python implementation ### Abstract Neural activity research has recently gained signicant attention due to its association with sensory information and behavior control. However, current methods of brain activity sensing require expensive equipment and physical contact with the subject. We propose a novel photonic-based method for remote detection of human senses. Physiological processes associated with hemodynamic activity due to activation of the cerebral cortex affected by different senses have been detected by remote monitoring of nano‐vibrations generated due to the transient blood ow to specic regions of the brain. We have found that combination of defocused, self‐ interference random speckle patterns with a spatiotemporal analysis using Deep Neural Network (DNN) allows associating between the activated sense and the seemingly random speckle patterns. ### Experimental setup ![Experimental setup](./figs/lab.png) ### Model
Optical machine for senses sensing using speckle and deep learning
Overview
Owner
Zeev Kalyuzhner
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