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Machine Learning Enhanced Compressive Hyperspectral Imaging
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"Single-Pixel" CS Camera
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CS Imaging in the Infrared
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Dark-field Microscopy
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Micro-Extinction Spectroscopy (MEXS) Setup
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Compressive Hyperspectral Microscopy System
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CS Endmember Unmixing
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CS Machine Vision
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Compressive Matched Filtere
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Convolutional Neural Network
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Hybrid Optical Compressed CNN
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Hardware HOC-CNN
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Dynamic-Rate Neural Network ce
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Compressed Domain Classification
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Compressed Sensing Machine Vision
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CS Regional Foveation
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Foveated Parallel Reconstruction
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Compressive Sensing Software
Description:
Explore machine learning-enhanced compressive hyperspectral imaging techniques in this conference talk presented by Kevin Kelly at IPAM's Multi-Modal Imaging Workshop. Delve into approaches combining compressive imaging systems and neural network algorithms for hyperspectral machine vision tasks, implemented in reconstruction and directly on compressive measurements. Discover how spatial light modulators perform optical computation in convolutional neural networks' first layer and their application in object recognition using neural networks as nonlinear transforms. Learn about a dynamic sampling rate approach for training neural networks specifically for compressive measurements in optical systems. Examine the L1 compressive foveation result and its applications in parallelizing large image reconstruction and replacing optimization algorithms with neural networks for rapid reconstruction. Gain insights into various topics, including single-pixel CS cameras, CS imaging in infrared, dark-field microscopy, micro-extinction spectroscopy, compressive hyperspectral microscopy systems, and compressed domain classification. Read more

Machine Learning Enhanced Compressive Hyperspectral Imaging - IPAM at UCLA

Institute for Pure & Applied Mathematics (IPAM)
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