A new approach suitable for solving inverse problems in multi-angle light scattering is presented. The method takes advantage of multidimensional function approximation capability of radial basis function (RBF) neural networks. An algorithm for training the networks is described in detail. It is shown that the radius and refractive index of homogenous spheres can be recovered accurately and quickly, with maximum relative errors of the order of 10-3 and mean errors as low as 10-5. The influence of the angular range of available scattering data on the loss of information and inversion accuracy is investigated and it is shown that more than two thirds of input data can be removed before substantial degradation of accuracy occurs.Peer reviewe
A neural-network approach is det eloped to investigate the inverse scattering from a perfectly condu...
Heterogeneous materials such as biological tissue scatter light in random, yet deterministic, ways. ...
‘In these times, during the rise in the popularity of institutional repositories, the Society does n...
“The original publication is available at www.springerlink.com” Copyright SpringerNeural networks ar...
© 2016 Elsevier LtdMultilayer perceptron neural networks with one, two and three inputs are built to...
Scattering phenomena have been of great interest and driving scientific advancement for centuries. M...
Abstract Inferring the properties of a scattering objective by analyzing the optical far-field respo...
For the majority of the particles in the atmosphere, calculations of scattering energy loss are incr...
© 2018 SPIE. We propose a method to use artificial neural networks to approximate light scattering b...
We present an inverse technique to determine particle-size distributions by training a layered perce...
Scattering often limits the controlled delivery of light in applications such as biomedical imaging,...
In this paper, the use of a neural network algorithm for the retrieval of the aerosol properties fro...
This study investigates the inverse solution on a buried and polarized sphere-shaped body using the ...
Imaging and delivering of light in a controlled manner through complex media such as glass diffusers...
The processing power of the computer has increased at unimaginable rates over the last few decades. ...
A neural-network approach is det eloped to investigate the inverse scattering from a perfectly condu...
Heterogeneous materials such as biological tissue scatter light in random, yet deterministic, ways. ...
‘In these times, during the rise in the popularity of institutional repositories, the Society does n...
“The original publication is available at www.springerlink.com” Copyright SpringerNeural networks ar...
© 2016 Elsevier LtdMultilayer perceptron neural networks with one, two and three inputs are built to...
Scattering phenomena have been of great interest and driving scientific advancement for centuries. M...
Abstract Inferring the properties of a scattering objective by analyzing the optical far-field respo...
For the majority of the particles in the atmosphere, calculations of scattering energy loss are incr...
© 2018 SPIE. We propose a method to use artificial neural networks to approximate light scattering b...
We present an inverse technique to determine particle-size distributions by training a layered perce...
Scattering often limits the controlled delivery of light in applications such as biomedical imaging,...
In this paper, the use of a neural network algorithm for the retrieval of the aerosol properties fro...
This study investigates the inverse solution on a buried and polarized sphere-shaped body using the ...
Imaging and delivering of light in a controlled manner through complex media such as glass diffusers...
The processing power of the computer has increased at unimaginable rates over the last few decades. ...
A neural-network approach is det eloped to investigate the inverse scattering from a perfectly condu...
Heterogeneous materials such as biological tissue scatter light in random, yet deterministic, ways. ...
‘In these times, during the rise in the popularity of institutional repositories, the Society does n...