14,569 research outputs found
Supervised Parameter Estimation of Neuron Populations from Multiple Firing Events
The firing dynamics of biological neurons in mathematical models is often
determined by the model's parameters, representing the neurons' underlying
properties. The parameter estimation problem seeks to recover those parameters
of a single neuron or a neuron population from their responses to external
stimuli and interactions between themselves. Most common methods for tackling
this problem in the literature use some mechanistic models in conjunction with
either a simulation-based or solution-based optimization scheme. In this paper,
we study an automatic approach of learning the parameters of neuron populations
from a training set consisting of pairs of spiking series and parameter labels
via supervised learning. Unlike previous work, this automatic learning does not
require additional simulations at inference time nor expert knowledge in
deriving an analytical solution or in constructing some approximate models. We
simulate many neuronal populations with different parameter settings using a
stochastic neuron model. Using that data, we train a variety of supervised
machine learning models, including convolutional and deep neural networks,
random forest, and support vector regression. We then compare their performance
against classical approaches including a genetic search, Bayesian sequential
estimation, and a random walk approximate model. The supervised models almost
always outperform the classical methods in parameter estimation and spike
reconstruction errors, and computation expense. Convolutional neural network,
in particular, is the best among all models across all metrics. The supervised
models can also generalize to out-of-distribution data to a certain extent.Comment: 31 page
Supervised machine learning based multi-task artificial intelligence classification of retinopathies
Artificial intelligence (AI) classification holds promise as a novel and
affordable screening tool for clinical management of ocular diseases. Rural and
underserved areas, which suffer from lack of access to experienced
ophthalmologists may particularly benefit from this technology. Quantitative
optical coherence tomography angiography (OCTA) imaging provides excellent
capability to identify subtle vascular distortions, which are useful for
classifying retinovascular diseases. However, application of AI for
differentiation and classification of multiple eye diseases is not yet
established. In this study, we demonstrate supervised machine learning based
multi-task OCTA classification. We sought 1) to differentiate normal from
diseased ocular conditions, 2) to differentiate different ocular disease
conditions from each other, and 3) to stage the severity of each ocular
condition. Quantitative OCTA features, including blood vessel tortuosity (BVT),
blood vascular caliber (BVC), vessel perimeter index (VPI), blood vessel
density (BVD), foveal avascular zone (FAZ) area (FAZ-A), and FAZ contour
irregularity (FAZ-CI) were fully automatically extracted from the OCTA images.
A stepwise backward elimination approach was employed to identify sensitive
OCTA features and optimal-feature-combinations for the multi-task
classification. For proof-of-concept demonstration, diabetic retinopathy (DR)
and sickle cell retinopathy (SCR) were used to validate the supervised machine
leaning classifier. The presented AI classification methodology is applicable
and can be readily extended to other ocular diseases, holding promise to enable
a mass-screening platform for clinical deployment and telemedicine.Comment: Supplemental material attached at the en
Hyperspectral Image Restoration via Total Variation Regularized Low-rank Tensor Decomposition
Hyperspectral images (HSIs) are often corrupted by a mixture of several types
of noise during the acquisition process, e.g., Gaussian noise, impulse noise,
dead lines, stripes, and many others. Such complex noise could degrade the
quality of the acquired HSIs, limiting the precision of the subsequent
processing. In this paper, we present a novel tensor-based HSI restoration
approach by fully identifying the intrinsic structures of the clean HSI part
and the mixed noise part respectively. Specifically, for the clean HSI part, we
use tensor Tucker decomposition to describe the global correlation among all
bands, and an anisotropic spatial-spectral total variation (SSTV)
regularization to characterize the piecewise smooth structure in both spatial
and spectral domains. For the mixed noise part, we adopt the norm
regularization to detect the sparse noise, including stripes, impulse noise,
and dead pixels. Despite that TV regulariztion has the ability of removing
Gaussian noise, the Frobenius norm term is further used to model heavy Gaussian
noise for some real-world scenarios. Then, we develop an efficient algorithm
for solving the resulting optimization problem by using the augmented Lagrange
multiplier (ALM) method. Finally, extensive experiments on simulated and
real-world noise HSIs are carried out to demonstrate the superiority of the
proposed method over the existing state-of-the-art ones.Comment: 15 pages, 20 figure
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