MSFA-Net: A convolutional neural network based on multispectral filter arrays for texture feature extraction
Résumé
Multispectral snapshot cameras fitted with a multispectral filter array (MSFA) acquire several spectral bands in one shot and provide a raw mosaic image in which a single channel value is available at each pixel. Texture features are classically extracted from fully-defined images that are estimated by demosaicing. Such an estimation may however cause spatio-spectral artifacts. Moreover, texture feature extraction becomes computationally inefficient and yields to high-dimensional features as the number of bands increases. In this paper, we propose an original approach based on a convolutional neural network called MSFA-Net to capture spatio-spectral interactions in raw images at reduced computation costs. Experiments of multispectral image classification and outdoor image segmentation show that the proposed approach outperforms several hand-crafted and deep learning-based feature extractors.
Origine | Fichiers produits par l'(les) auteur(s) |
---|