Differentiable model-based adaptive optics with transmitted and
reflected light
- URL: http://arxiv.org/abs/2007.13400v1
- Date: Mon, 27 Jul 2020 09:39:19 GMT
- Title: Differentiable model-based adaptive optics with transmitted and
reflected light
- Authors: Ivan Vishniakou, Johannes D. Seelig
- Abstract summary: We show that combining model-based adaptive optics with the optimization techniques of machine learning frameworks can find aberration corrections with a small number of measurements.
Focusing in transmission can be achieved based only on reflected light, compatible with an epidetection imaging configuration.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Aberrations limit optical systems in many situations, for example when
imaging in biological tissue. Machine learning offers novel ways to improve
imaging under such conditions by learning inverse models of aberrations.
Learning requires datasets that cover a wide range of possible aberrations,
which however becomes limiting for more strongly scattering samples, and does
not take advantage of prior information about the imaging process. Here, we
show that combining model-based adaptive optics with the optimization
techniques of machine learning frameworks can find aberration corrections with
a small number of measurements. Corrections are determined in a transmission
configuration through a single aberrating layer and in a reflection
configuration through two different layers at the same time. Additionally,
corrections are not limited by a predetermined model of aberrations (such as
combinations of Zernike modes). Focusing in transmission can be achieved based
only on reflected light, compatible with an epidetection imaging configuration.
Related papers
- Generalizable Non-Line-of-Sight Imaging with Learnable Physical Priors [52.195637608631955]
Non-line-of-sight (NLOS) imaging has attracted increasing attention due to its potential applications.
Existing NLOS reconstruction approaches are constrained by the reliance on empirical physical priors.
We introduce a novel learning-based solution, comprising two key designs: Learnable Path Compensation (LPC) and Adaptive Phasor Field (APF)
arXiv Detail & Related papers (2024-09-21T04:39:45Z) - DI-Retinex: Digital-Imaging Retinex Theory for Low-Light Image Enhancement [73.57965762285075]
We propose a new expression called Digital-Imaging Retinex theory (DI-Retinex) through theoretical and experimental analysis of Retinex theory in digital imaging.
Our proposed method outperforms all existing unsupervised methods in terms of visual quality, model size, and speed.
arXiv Detail & Related papers (2024-04-04T09:53:00Z) - Spatial super-resolution in nanosensing with blinking emitters [79.16635054977068]
We propose a method of spatial resolution enhancement in metrology with blinking fluorescent nanosensors.
We believe that blinking fluorescent sensing agents being complemented with the developed image analysis technique could be utilized routinely in the life science sector.
arXiv Detail & Related papers (2024-02-27T10:38:05Z) - Fearless Luminance Adaptation: A Macro-Micro-Hierarchical Transformer
for Exposure Correction [65.5397271106534]
A single neural network is difficult to handle all exposure problems.
In particular, convolutions hinder the ability to restore faithful color or details on extremely over-/under- exposed regions.
We propose a Macro-Micro-Hierarchical transformer, which consists of a macro attention to capture long-range dependencies, a micro attention to extract local features, and a hierarchical structure for coarse-to-fine correction.
arXiv Detail & Related papers (2023-09-02T09:07:36Z) - Neural Invertible Variable-degree Optical Aberrations Correction [6.6855248718044225]
We propose a novel aberration correction method with an invertible architecture by leveraging its information-lossless property.
Within the architecture, we develop conditional invertible blocks to allow the processing of aberrations with variable degrees.
Our method is evaluated on both a synthetic dataset from physics-based imaging simulation and a real captured dataset.
arXiv Detail & Related papers (2023-04-12T01:56:42Z) - Fluctuation-based deconvolution in fluorescence microscopy using
plug-and-play denoisers [2.236663830879273]
spatial resolution of images of living samples obtained by fluorescence microscopes is physically limited due to the diffraction of visible light.
Several deconvolution and super-resolution techniques have been proposed to overcome this limitation.
arXiv Detail & Related papers (2023-03-20T15:43:52Z) - Light Lies: Optical Adversarial Attack [24.831391763610046]
This paper introduces an optical adversarial attack, which physically alters the light field information arriving at the image sensor so that the classification model yields misclassification.
We present experiments based on both simulation and a real hardware optical system, from which the feasibility of the proposed optical attack is demonstrated.
arXiv Detail & Related papers (2021-06-18T04:20:49Z) - Differentiable model-based adaptive optics for two-photon microscopy [0.0]
Aberrations limit scanning fluorescence microscopy when imaging in scattering materials such as biological tissue.
Model-based approaches for adaptive optics take advantage of a computational model of the optical setup.
We extend this approach to two-photon scanning microscopy.
arXiv Detail & Related papers (2021-04-29T12:50:08Z) - Universal and Flexible Optical Aberration Correction Using Deep-Prior
Based Deconvolution [51.274657266928315]
We propose a PSF aware plug-and-play deep network, which takes the aberrant image and PSF map as input and produces the latent high quality version via incorporating lens-specific deep priors.
Specifically, we pre-train a base model from a set of diverse lenses and then adapt it to a given lens by quickly refining the parameters.
arXiv Detail & Related papers (2021-04-07T12:00:38Z) - SIR: Self-supervised Image Rectification via Seeing the Same Scene from
Multiple Different Lenses [82.56853587380168]
We propose a novel self-supervised image rectification (SIR) method based on an important insight that the rectified results of distorted images of the same scene from different lens should be the same.
We leverage a differentiable warping module to generate the rectified images and re-distorted images from the distortion parameters.
Our method achieves comparable or even better performance than the supervised baseline method and representative state-of-the-art methods.
arXiv Detail & Related papers (2020-11-30T08:23:25Z) - Adaptive optics with reflected light and deep neural networks [0.0]
We develop a method for adaptive optics with reflected light and deep neural networks compatible with an epi-detection configuration.
Large datasets of sample aberrations which consist of excitation and detection path aberrations as well as the corresponding reflected focus images are generated.
Deep neural networks can disentangle and independently correct excitation and detection aberrations based on reflected light images recorded from scattering samples.
arXiv Detail & Related papers (2020-04-09T15:39:51Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.