DeepCEL0 for 2D Single Molecule Localization in Fluorescence Microscopy
- URL: http://arxiv.org/abs/2107.02281v1
- Date: Mon, 5 Jul 2021 21:31:46 GMT
- Title: DeepCEL0 for 2D Single Molecule Localization in Fluorescence Microscopy
- Authors: Pasquale Cascarano, Maria Colomba Comes, Andrea Sebastiani, Arianna
Mencattini, Elena Loli Piccolomini, Eugenio Martinelli
- Abstract summary: In fluorescence microscopy, Single Molecule localization Microscopy techniques aim at localizing with high precision high density fluorescent molecules.
Super Resolution (SR) plays an important role in this field since it allows to go beyond the intrinsic light diffraction limit.
We propose a deep learning-based algorithm for precise molecule localization of high density frames acquired by SMLM techniques.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In fluorescence microscopy, Single Molecule Localization Microscopy (SMLM)
techniques aim at localizing with high precision high density fluorescent
molecules by stochastically activating and imaging small subsets of blinking
emitters. Super Resolution (SR) plays an important role in this field since it
allows to go beyond the intrinsic light diffraction limit. In this work, we
propose a deep learning-based algorithm for precise molecule localization of
high density frames acquired by SMLM techniques whose $\ell_{2}$-based loss
function is regularized by positivity and $\ell_{0}$-based constraints. The
$\ell_{0}$ is relaxed through its Continuous Exact $\ell_{0}$ (CEL0)
counterpart. The arising approach, named DeepCEL0, is parameter-free, more
flexible, faster and provides more precise molecule localization maps if
compared to the other state-of-the-art methods. We validate our approach on
both simulated and real fluorescence microscopy data.
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