Reconstructing Patchy Reionization with Deep Learning
- URL: http://arxiv.org/abs/2101.01214v1
- Date: Mon, 4 Jan 2021 19:58:28 GMT
- Title: Reconstructing Patchy Reionization with Deep Learning
- Authors: Eric Guzman and Joel Meyers
- Abstract summary: We describe a convolutional neural network, ResUNet-CMB, that is capable of the simultaneous reconstruction of two sources of secondary CMB anisotropies.
We show that the ResUNet-CMB network significantly outperforms the quadratic estimator at low noise levels.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The precision anticipated from next-generation cosmic microwave background
(CMB) surveys will create opportunities for characteristically new insights
into cosmology. Secondary anisotropies of the CMB will have an increased
importance in forthcoming surveys, due both to the cosmological information
they encode and the role they play in obscuring our view of the primary
fluctuations. Quadratic estimators have become the standard tools for
reconstructing the fields that distort the primary CMB and produce secondary
anisotropies. While successful for lensing reconstruction with current data,
quadratic estimators will be sub-optimal for the reconstruction of lensing and
other effects at the expected sensitivity of the upcoming CMB surveys. In this
paper we describe a convolutional neural network, ResUNet-CMB, that is capable
of the simultaneous reconstruction of two sources of secondary CMB
anisotropies, gravitational lensing and patchy reionization. We show that the
ResUNet-CMB network significantly outperforms the quadratic estimator at low
noise levels and is not subject to the lensing-induced bias on the patchy
reionization reconstruction that would be present with a straightforward
application of the quadratic estimator.
Related papers
- A Symmetry-Aware Exploration of Bayesian Neural Network Posteriors [5.54475507578913]
The distribution of the weights of modern deep neural networks (DNNs) is an eminently complex object due to its extremely high dimensionality.
This paper proposes one of the first large-scale explorations of the posterior distribution of BNNs, expanding its study to real-world vision tasks and architectures.
arXiv Detail & Related papers (2023-10-12T12:45:13Z) - Neural Poisson Surface Reconstruction: Resolution-Agnostic Shape
Reconstruction from Point Clouds [53.02191521770926]
We introduce Neural Poisson Surface Reconstruction (nPSR), an architecture for shape reconstruction that addresses the challenge of recovering 3D shapes from points.
nPSR exhibits two main advantages: First, it enables efficient training on low-resolution data while achieving comparable performance at high-resolution evaluation.
Overall, the neural Poisson surface reconstruction not only improves upon the limitations of classical deep neural networks in shape reconstruction but also achieves superior results in terms of reconstruction quality, running time, and resolution agnosticism.
arXiv Detail & Related papers (2023-08-03T13:56:07Z) - Cosmic Microwave Background Recovery: A Graph-Based Bayesian
Convolutional Network Approach [2.689611937246938]
We employ deep learning as a data-driven approach to CMB cleaning from multi-frequency full-sky maps.
We develop a graph-based Bayesian convolutional neural network based on the U-Net architecture that predicts cleaned CMB with pixel-wise uncertainty estimates.
We show that our model accurately recovers the cleaned CMB sky map and resulting angular power spectrum while identifying regions of uncertainty.
arXiv Detail & Related papers (2023-02-24T00:49:43Z) - NeurAR: Neural Uncertainty for Autonomous 3D Reconstruction [64.36535692191343]
Implicit neural representations have shown compelling results in offline 3D reconstruction and also recently demonstrated the potential for online SLAM systems.
This paper addresses two key challenges: 1) seeking a criterion to measure the quality of the candidate viewpoints for the view planning based on the new representations, and 2) learning the criterion from data that can generalize to different scenes instead of hand-crafting one.
Our method demonstrates significant improvements on various metrics for the rendered image quality and the geometry quality of the reconstructed 3D models when compared with variants using TSDF or reconstruction without view planning.
arXiv Detail & Related papers (2022-07-22T10:05:36Z) - Information Entropy Initialized Concrete Autoencoder for Optimal Sensor
Placement and Reconstruction of Geophysical Fields [58.720142291102135]
We propose a new approach to the optimal placement of sensors for reconstructing geophysical fields from sparse measurements.
We demonstrate our method on the two examples: (a) temperature and (b) salinity fields around the Barents Sea and the Svalbard group of islands.
We find out that the obtained optimal sensor locations have clear physical interpretation and correspond to the boundaries between sea currents.
arXiv Detail & Related papers (2022-06-28T12:43:38Z) - PUERT: Probabilistic Under-sampling and Explicable Reconstruction
Network for CS-MRI [47.24613772568027]
Compressed Sensing MRI aims at reconstructing de-aliased images from sub-Nyquist sampling k-space data to accelerate MR Imaging.
We propose a novel end-to-end Probabilistic Under-sampling and Explicable Reconstruction neTwork, dubbed PUERT, to jointly optimize the sampling pattern and the reconstruction network.
Experiments on two widely used MRI datasets demonstrate that our proposed PUERT achieves state-of-the-art results in terms of both quantitative metrics and visual quality.
arXiv Detail & Related papers (2022-04-24T04:23:57Z) - Towards performant and reliable undersampled MR reconstruction via
diffusion model sampling [67.73698021297022]
DiffuseRecon is a novel diffusion model-based MR reconstruction method.
It guides the generation process based on the observed signals.
It does not require additional training on specific acceleration factors.
arXiv Detail & Related papers (2022-03-08T02:25:38Z) - Reconstructing Cosmic Polarization Rotation with ResUNet-CMB [0.0]
Anisotropic cosmic polarization rotation leads to statistical anisotropy in CMB polarization.
We extend the ResUNet-CMB convolutional neural network to reconstruct anisotropic cosmic polarization rotation in the presence of gravitational lensing and patchy reionization.
arXiv Detail & Related papers (2021-09-20T17:39:09Z) - Probabilistic 3D surface reconstruction from sparse MRI information [58.14653650521129]
We present a novel probabilistic deep learning approach for concurrent 3D surface reconstruction from sparse 2D MR image data and aleatoric uncertainty prediction.
Our method is capable of reconstructing large surface meshes from three quasi-orthogonal MR imaging slices from limited training sets.
arXiv Detail & Related papers (2020-10-05T14:18:52Z) - Baryon acoustic oscillations reconstruction using convolutional neural
networks [1.9262162668141078]
We propose a new scheme to reconstruct the baryon acoustic oscillations (BAO) signal, which contains key cosmological information, based on deep convolutional neural networks (CNN)
We find that the network trained in one cosmology is able to reconstruct BAO peaks in the others, i.e. recovering information lost to non-linearity independent of cosmology.
arXiv Detail & Related papers (2020-02-24T13:18:31Z)
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.