2022
DOI: 10.48550/arxiv.2204.09319
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Logarithmic Morphological Neural Nets robust to lighting variations

Guillaume Noyel,
Emile Barbier--Renard,
Michel Jourlin
et al.

Abstract: Morphological neural networks allow to learn the weights of a structuring function knowing the desired output image. However, those networks are not intrinsically robust to lighting variations in images with an optical cause, such as a change of light intensity. In this paper, we introduce a morphological neural network which possesses such a robustness to lighting variations. It is based on the recent framework of Logarithmic Mathematical Morphology (LMM), i.e. Mathematical Morphology defined with the Logarit… Show more

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