Michele Alberti
University of Fribourg
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Michele Alberti.
arXiv: Computer Vision and Pattern Recognition | 2017
Michele Alberti; Mathias Seuret; Vinaychandran Pondenkandath; Rolf Ingold; Marcus Liwicki
In this paper, we present a novel approach to perform deep neural networks layer-wise weight initialization using Linear Discriminant Analysis (LDA). Typically, the weights of a deep neural network are initialized with: random values, greedy layer-wise pre-training (usually as Deep Belief Network or as auto-encoder) or by re-using the layers from another network (transfer learning). Hence, many training epochs are needed before meaningful weights are learned, or a rather similar dataset is required for seeding a fine-tuning of transfer learning. In this paper, we describe how to turn an LDA into either a neural layer or a classification layer. We analyze the initialization technique on historical documents. First, we show that an LDA-based initialization is quick and leads to a very stable initialization. Furthermore, for the task of layout analysis at pixel level, we investigate the effectiveness of LDA-based initialization and show that it outperforms state-of-the-art random weight initialization methods.
arXiv: Computer Vision and Pattern Recognition | 2018
Paul Maergner; Vinaychandran Pondenkandath; Michele Alberti; Marcus Liwicki; Kaspar Riesen; Rolf Ingold; Andreas Fischer
Biometric authentication by means of handwritten signatures is a challenging pattern recognition task, which aims to infer a writer model from only a handful of genuine signatures. In order to make it more difficult for a forger to attack the verification system, a promising strategy is to combine different writer models. In this work, we propose to complement a recent structural approach to offline signature verification based on graph edit distance with a statistical approach based on metric learning with deep neural networks. On the MCYT and GPDS benchmark datasets, we demonstrate that combining the structural and statistical models leads to significant improvements in performance, profiting from their complementary properties.
international conference on document analysis and recognition | 2017
Mathias Seuret; Michele Alberti; Marcus Liwicki; Rolf Ingold
international conference on document analysis and recognition | 2017
Fotini Simistira; Manuel Bouillon; Mathias Seuret; Marcel Würsch; Michele Alberti; Rolf Ingold; Marcus Liwicki
Archive | 2016
Mathias Seuret; Michele Alberti
arXiv: Computer Vision and Pattern Recognition | 2018
Michele Alberti; Vinaychandran Pondenkandath; Marcel Würsch; Rolf Ingold; Marcus Liwicki
international conference on document analysis and recognition | 2017
Michele Alberti; Manuel Bouillon; Rolf Ingold; Marcus Liwicki
Archive | 2017
Michele Alberti; Mathias Seuret; Rolf Ingold; Marcus Liwicki
arXiv: Learning | 2018
Michele Alberti; Vinaychandran Pondenkandath; Marcel Würsch; Manuel Bouillon; Mathias Seuret; Rolf Ingold; Marcus Liwicki
arXiv: Computer Vision and Pattern Recognition | 2018
Vinaychandran Pondenkandath; Michele Alberti; Nicole Eichenberger; Rolf Ingold; Marcus Liwicki