International audienceThe paper presents a semantic segmentation method which is directly applicable to compressed hyperspectral images acquired with a dual-disperser CASSI instrument. It introduses an algorithm based on a shallow neural network that exploits the spectral filtering performed by the optical system and the compressed hyperspectral images measured by the detector. Encouraging results that exploit 50 to 100 less data than the whole hyperspectral datacube on PaviaU and IndianPines datasets are presented
This research paper presents novel condensed CNN architecture for the recognition of multispectral i...
Session 5A-Mijares-Hyperspectral image compression using convolutional neural networks with local sp...
Hyperspectral imagery brings to remote sensing a whole new set of capabilities. Common images are re...
International audienceThe paper presents a semantic segmentation method which is directly applicable...
Hyperspectral image segmentation is an emerging area with numerous applications, including agricultu...
Nowadays, the hyperspectral imaging is the focus of intense research, because its applications can b...
Fast detection and identification of unknown substances is an area of interest for many parties. Ram...
This paper studies the problem of training a semantic segmentation neural network with weak annotati...
International audienceCet article présente une technique d'apprentissage qui permet de segmenter une...
Hyperspectral compressive imaging has taken advantage of compressive sensing theory to capture spect...
Foreign species can deteriorate the environment and the economy of a country. To automatically monit...
Hyperspectral Image Classification is an important research problem in remote sensing.Classification...
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
Hyperspectral imaging requires handling a large amount of multidimensional spectral information. Hyp...
In this thesis, a three-stage algorithm for performing unsupervised segmentation of hyperspectral im...
This research paper presents novel condensed CNN architecture for the recognition of multispectral i...
Session 5A-Mijares-Hyperspectral image compression using convolutional neural networks with local sp...
Hyperspectral imagery brings to remote sensing a whole new set of capabilities. Common images are re...
International audienceThe paper presents a semantic segmentation method which is directly applicable...
Hyperspectral image segmentation is an emerging area with numerous applications, including agricultu...
Nowadays, the hyperspectral imaging is the focus of intense research, because its applications can b...
Fast detection and identification of unknown substances is an area of interest for many parties. Ram...
This paper studies the problem of training a semantic segmentation neural network with weak annotati...
International audienceCet article présente une technique d'apprentissage qui permet de segmenter une...
Hyperspectral compressive imaging has taken advantage of compressive sensing theory to capture spect...
Foreign species can deteriorate the environment and the economy of a country. To automatically monit...
Hyperspectral Image Classification is an important research problem in remote sensing.Classification...
Hyperspectral imaging entails data typically spanning hundreds of contiguous wavebands in a certain ...
Hyperspectral imaging requires handling a large amount of multidimensional spectral information. Hyp...
In this thesis, a three-stage algorithm for performing unsupervised segmentation of hyperspectral im...
This research paper presents novel condensed CNN architecture for the recognition of multispectral i...
Session 5A-Mijares-Hyperspectral image compression using convolutional neural networks with local sp...
Hyperspectral imagery brings to remote sensing a whole new set of capabilities. Common images are re...