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Hyperspectral image classification using parallel autoencoding diabolo networks on multi-core and many-core architectures

Articolo
Data di Pubblicazione:
2018
Abstract:
One of the most important tasks in hyperspectral imaging is the classification of the pixels in the scene in order to produce thematic maps. This problem can be typically solved through machine learning techniques. In particular, deep learning algorithms have emerged in recent years as a suitable methodology to classify hyperspectral data. Moreover, the high dimensionality of hyperspectral data, together with the increasing availability of unlabeled samples, makes deep learning an appealing approach to process and interpret those data. However, the limited number of labeled samples often complicates the exploitation of supervised techniques. Indeed, in order to guarantee a suitable precision, a large number of labeled samples is normally required. This hurdle can be overcome by resorting to unsupervised classification algorithms. In particular, autoencoders can be used to analyze a hyperspectral image using only unlabeled data. However, the high data dimensionality leads to prohibitive training times. In this regard, it is important to realize that the operations involved in autoencoders training are intrinsically parallel. Therefore, in this paper we present an approach that exploits multi-core and many-core devices in order to achieve efficient autoencoders training in hyperspectral imaging applications. Specifically, in this paper, we present new OpenMP and CUDA frameworks for autoencoder training. The obtained results show that the CUDA framework provides a speed-up of about two orders of magnitudes as compared to an optimized serial processing chain
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
CUDA; Graphics processing units (GPUs); Hyperspectral imaging; Multi-core CPU; OpenMP; Parallel processing; Control and Systems Engineering; Signal Processing; Hardware and Architecture; Computer Networks and Communications; Electrical and Electronic Engineering
Elenco autori:
Torti, Emanuele; Fontanella, Alessandro; Plaza, Antonio; Plaza, Javier; Leporati, Francesco
Autori di Ateneo:
LEPORATI FRANCESCO
TORTI EMANUELE
Link alla scheda completa:
https://iris.unipv.it/handle/11571/1244786
Pubblicato in:
ELECTRONICS
Journal
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URL

https://www.mdpi.com/2079-9292/7/12/411/pdf
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