We present a novel way of using neural networks (NN) to estimate the redshift distri-bution of a galaxy sample. We are able to obtain a probability density function (PDF) for each galaxy using a classification neural network. The method is applied to 58714 galaxies in CFHTLenS that have spectroscopic redshifts from DEEP2, VVDS and VIPERS. Using this data we show that the stacked PDF’s give an excellent represen-tation of the true N(z) using information from 5, 4 or 3 photometric bands. We show that the fractional error due to using N(zphot) instead of N(ztruth) is 6 1 % on the lensing power spectrum (Pκ) in several tomographic bins. Further we investigate how well this method performs when few training samples are available and show that in...
We present a determination of the effects of including galaxy morphological parameters in photometri...
International audienceIn this paper, we address the problem of spectroscopic redshift estimation in ...
Photometric redshifts (photo-z's) provide an alternative way to estimate the distances of large samp...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
Galaxy redshifts are a key characteristic for nearly all extragalactic studies. Since spectroscopic ...
A new approach to estimating photometric redshifts – using artificial neural networks (ANNs) – is in...
We developed a deep convolutional neural network (CNN), used as a classifier, to estimate photometri...
International audienceImproving distance measurements in large imaging surveys is a major challenge ...
In this thesis work I explored the applicability of incorporating the galaxies spatial distribution ...
We introduce an ordinal classification algorithm for photometric redshift estimation, which signific...
We present a determination of the effects of including galaxy morphological parameters in photometri...
International audienceIn this paper, we address the problem of spectroscopic redshift estimation in ...
Photometric redshifts (photo-z's) provide an alternative way to estimate the distances of large samp...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
We present a technique for the estimation of photometric redshifts based on feed-forward neural netw...
Galaxy redshifts are a key characteristic for nearly all extragalactic studies. Since spectroscopic ...
A new approach to estimating photometric redshifts – using artificial neural networks (ANNs) – is in...
We developed a deep convolutional neural network (CNN), used as a classifier, to estimate photometri...
International audienceImproving distance measurements in large imaging surveys is a major challenge ...
In this thesis work I explored the applicability of incorporating the galaxies spatial distribution ...
We introduce an ordinal classification algorithm for photometric redshift estimation, which signific...
We present a determination of the effects of including galaxy morphological parameters in photometri...
International audienceIn this paper, we address the problem of spectroscopic redshift estimation in ...
Photometric redshifts (photo-z's) provide an alternative way to estimate the distances of large samp...