Contributions to the analysis and segmentation of remote sensing hyperspectral images

  1. Gallego Merino, Miren Josune
Supervised by:
  1. Manuel Graña Romay Director

Defence university: Universidad del País Vasco - Euskal Herriko Unibertsitatea

Fecha de defensa: 13 June 2011

Committee:
  1. Francisco Javier Torrealdea Folgado Chair
  2. Francisco Xabier Albizuri Irigoyen Secretary
  3. Juan Manuel García Chamizo Committee member
  4. Amparo Alonso Betanzos Committee member
  5. Ramón Ferreiro García Committee member
Department:
  1. Ciencia de la Computación e Inteligencia Artificial

Type: Thesis

Teseo: 313610 DIALNET lock_openADDI editor

Abstract

This PhD Thesis deals with the segmentation of hyperspectral images from the point of view of Lattice Computing. We have introduced the application of Associative Morphological Memories as a tool to detect strong lattice independence, which has been proven equivalent to affine independence. Therefore, sets of strong lattice independent vectors found using our algorithms correspond to the vertices of convex sets that cover most of the data. Unmixing the data relative to these endmembers provides a collection of abundance images which can be assumed either as unsupervised segmentations of the images or as features extracted from the hyperspectral image pixels. Besides, we have applied this feature extraction to propose a content based image retrieval approach based on the image spectral characterization provided by the endmembers. Finally, we extended our ideas to the proposal of Morphological Cellular Automata whose dynamics are guided by the morphological/lattice independence properties of the image pixels. Our works have also explored the applicability of Evolution Strategies to the endmember induction from the hyperspectral image data.