Identificador persistente para citar o vincular este elemento: http://hdl.handle.net/10662/20346
Títulos: Deep pyramidal residual networks for spectral–spatial hyperspectral image classification
Autores/as: Paoletti Ávila, Mercedes Eugenia
Haut Hurtado, Juan Mario
Fernández Beltrán, Rubén
Plaza Miguel, Javier
Plaza, Antonio
Pla, Filiberto
Palabras clave: Imágenes hiperespectrales;Redes neuronales convolucionales;Redes residuales;Hyperspectral imaging (HSI);Convolutional neural networks (CNNs);Residual networks (ResNets)
Fecha de publicación: 2019
Editor/a: IEEE
Resumen: Convolutional neural networks (CNNs) exhibit good performance in image processing tasks, pointing themselves as the current state-of-the-art of deep learning methods. However, the intrinsic complexity of remotely sensed hyperspectral images (HSIs) still limits the performance of many CNN models. The high dimensionality of HSI data, together with the underlying redundancy and noise, often make standard CNN approaches unable to generalize discriminative spectral-spatial features. Moreover, deeper CNN architectures also find challenges when additional layers are added, which hampers the network convergence and produces low classification accuracies. In order to mitigate these issues, this paper presents a new deep CNN architecture specially designed for HSI data. Our new model pursues to improve the spectral-spatial features uncovered by the convolutional filters of the network. Specifically, the proposed residual-based approach gradually increases the feature map dimension at all convolutional layers, grouped in pyramidal bottleneck residual blocks, in order to involve more locations as the network depth increases while balancing the workload among all units, preserving the time complexity per layer. It can be seen as a pyramid, where the deeper the blocks, the more feature maps can be extracted. Therefore, the diversity of high-level spectralspatial attributes can be gradually increased across layers to enhance the performance of the proposed network with HIS data. Our experiments, conducted using four well-known HIS datasets and ten different classification techniques, reveal that our newly developed HSI pyramidal residual model is able to provide competitive advantages (in terms of both classification accuracy and computational time) over state-of-the-art HSI classification methods.
URI: http://hdl.handle.net/10662/20346
ISSN: 0196-2892
DOI: 10.1109/TGRS.2018.2860125
Colección:DTCYC - Artículos

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