16 research outputs found
A Variable Density Sampling Scheme for Compressive Fourier Transform Interferometry
Fourier Transform Interferometry (FTI) is an appealing Hyperspectral (HS)
imaging modality for many applications demanding high spectral resolution,
e.g., in fluorescence microscopy. However, the effective resolution of FTI is
limited by the durability of biological elements when exposed to illuminating
light. Overexposed elements are subject to photo-bleaching and become unable to
fluoresce. In this context, the acquisition of biological HS volumes based on
sampling the Optical Path Difference (OPD) axis at Nyquist rate leads to
unpleasant trade-offs between spectral resolution, quality of the HS volume,
and light exposure intensity. We propose two variants of the FTI imager, i.e.,
Coded Illumination-FTI (CI-FTI) and Structured Illumination FTI (SI-FTI), based
on the theory of compressive sensing (CS). These schemes efficiently modulate
light exposure temporally (in CI-FTI) or spatiotemporally (in SI-FTI).
Leveraging a variable density sampling strategy recently introduced in CS, we
provide near-optimal illumination strategies, so that the light exposure
imposed on a biological specimen is minimized while the spectral resolution is
preserved. Our analysis focuses on two criteria: (i) a trade-off between
exposure intensity and the quality of the reconstructed HS volume for a given
spectral resolution; (ii) maximizing HS volume quality for a fixed spectral
resolution and constrained exposure budget. Our contributions can be adapted to
an FTI imager without hardware modifications. The reconstruction of HS volumes
from CS-FTI measurements relies on an -norm minimization problem promoting
a spatiospectral sparsity prior. Numerically, we support the proposed methods
on synthetic data and simulated CS measurements (from actual FTI measurements)
under various scenarios. In particular, the biological HS volumes can be
reconstructed with a three-to-ten-fold reduction in the light exposure.Comment: 45 pages, 11 figure
The advantages of sub-sampling and Inpainting for scanning transmission electron microscopy
Images and spectra obtained from aberration corrected scanning transmission electron microscopes (STEM) are now used routinely to quantify the morphology, structure, composition, chemistry, bonding, and optical/electronic properties of nanostructures, interfaces, and defects in many materials/biological systems. However, obtaining quantitative and reproducible atomic resolution observations from some experiments is actually harder with these ground-breaking instrumental capabilities, as the increase in beam current from using the correctors brings with it the potential for electron beam modification of the specimen during image acquisition. This beam effect is even more acute for in situ STEM observations, where the desired outcome being investigated is a result of a series of complicated transients, all of which can be modified in unknown ways by the electron beam. The aim in developing and applying new methods in STEM is, therefore, to focus on more efficient use of the dose that is supplied to the sample and to extract the most information from each image (or set of images). For STEM (and for that matter, all electron/ion/photon scanning systems), one way to achieve this is by sub-sampling the image and using Inpainting algorithms to reconstruct it. By separating final image quality from overall dose in this way and manipulating the dose distribution to be best for the stability of the sample, images can be acquired both faster and with less beam effects. In this paper, the methodology behind sub-sampling and Inpainting is described, and the potential for Inpainting to be applied to novel real time dynamic experiments will be discussed
A Targeted Sampling Strategy for Compressive Cryo Focused Ion Beam Scanning Electron Microscopy
Cryo Focused Ion-Beam Scanning Electron Microscopy (cryo FIB-SEM) enables
three-dimensional and nanoscale imaging of biological specimens via a slice and
view mechanism. The FIB-SEM experiments are, however, limited by a slow
(typically, several hours) acquisition process and the high electron doses
imposed on the beam sensitive specimen can cause damage. In this work, we
present a compressive sensing variant of cryo FIB-SEM capable of reducing the
operational electron dose and increasing speed. We propose two Targeted
Sampling (TS) strategies that leverage the reconstructed image of the previous
sample layer as a prior for designing the next subsampling mask. Our image
recovery is based on a blind Bayesian dictionary learning approach, i.e., Beta
Process Factor Analysis (BPFA). This method is experimentally viable due to our
ultra-fast GPU-based implementation of BPFA. Simulations on artificial
compressive FIB-SEM measurements validate the success of proposed methods: the
operational electron dose can be reduced by up to 20 times. These methods have
large implications for the cryo FIB-SEM community, in which the imaging of beam
sensitive biological materials without beam damage is crucial.Comment: Submitted to ICASSP 202
The Potential of Subsampling and Inpainting for Fast Low-Dose Cryo FIB-SEM Imaging and Tomography
Traditional image acquisition for cryo focused ion-beam scanning electron
microscopy tomography often sees thousands of images being captured over a
period of many hours, with immense data sets being produced. When imaging beam
sensitive materials, these images are often compromised by additional
constraints related to beam damage and the devitrification of the material
during imaging, which renders data acquisition both costly and unreliable.
Subsampling and inpainting are proposed as solutions for both of these aspects,
allowing fast and low-dose imaging to take place in the FIB-SEM without an
appreciable low in image quality. In this work, experimental data is presented
which validates subsampling and inpainting as a useful tool for convenient and
reliable data acquisition in a FIB-SEM, with new methods of handling
3-dimensional data being employed in context of dictionary learning and
inpainting algorithms using a newly developed microscope control software and
data recovery algorithm.Comment: In submission to "Microscopy and Microanalysis" journal. Authorship
reviewed from previous submissio
A Targeted Sampling Strategy for Compressive Cryo Focused Ion Beam Scanning Electron Microscopy
Cryo Focused Ion-Beam Scanning Electron Microscopy (cryo FIB-SEM) enables
three-dimensional and nanoscale imaging of biological specimens via a slice and
view mechanism. The FIB-SEM experiments are, however, limited by a slow
(typically, several hours) acquisition process and the high electron doses
imposed on the beam sensitive specimen can cause damage. In this work, we
present a compressive sensing variant of cryo FIB-SEM capable of reducing the
operational electron dose and increasing speed. We propose two Targeted
Sampling (TS) strategies that leverage the reconstructed image of the previous
sample layer as a prior for designing the next subsampling mask. Our image
recovery is based on a blind Bayesian dictionary learning approach, i.e., Beta
Process Factor Analysis (BPFA). This method is experimentally viable due to our
ultra-fast GPU-based implementation of BPFA. Simulations on artificial
compressive FIB-SEM measurements validate the success of proposed methods: the
operational electron dose can be reduced by up to 20 times. These methods have
large implications for the cryo FIB-SEM community, in which the imaging of beam
sensitive biological materials without beam damage is crucial
A Targeted Sampling Strategy for Compressive Cryo Focused Ion Beam Scanning Electron Microscopy
Cryo Focused Ion-Beam Scanning Electron Microscopy (cryo FIB-SEM) enables three-dimensional and nanoscale imaging of biological specimens via a slice and view mechanism. The FIB-SEM experiments are, however, limited by a slow (typically, several hours) acquisition process and the high electron doses imposed on the beam sensitive specimen can cause damage. In this work, we present a compressive sensing variant of cryo FIB-SEM capable of reducing the operational electron dose and increasing speed. We propose two Targeted Sampling (TS) strategies that leverage the reconstructed image of the previous sample layer as a prior for designing the next subsampling mask. Our image recovery is based on a blind Bayesian dictionary learning approach, i.e., Beta Process Factor Analysis (BPFA). This method is experimentally viable due to our GPU-based implementation of BPFA. Simulations on artificial compressive FIB-SEM measurements validate the success of proposed methods: the operational electron dose can be reduced by up to 20 times. These methods have large implications for the cryo FIB-SEM community, in which the imaging of beam sensitive biological materials without beam damage is crucial