This paper presents a new compression technique for multispectral images. The proposed encoding algorithm is based on two steps: segmentation and transform coding. The segmentation step is based on a hierarchical tree-structured Markov random field model for the image, which is able to effectively take into account the spatial dependencies. After segmentation, class-adapted transform coding is used to decorrelate information both in the spectral and spatial domain. Simulation results show that the proposed technique exhibits a significant performance gain at very low bit rates, while assuring a satisfactory image quality.
Multispectral-image compression based on tree-structured Markov random field segmentation and transform coding / Gelli, Giacinto; Poggi, Giovanni; Ragozini, A. R. P.. - (1999), pp. 1167-1170. (Intervento presentato al convegno IEEE International Geoscience and Remote Sensing Symposium (IGARSS-1999) tenutosi a Amburgo (Germania) nel Giugno-luglio) [10.1109/IGARSS.1999.774567].
Multispectral-image compression based on tree-structured Markov random field segmentation and transform coding
GELLI, GIACINTO;POGGI, GIOVANNI;
1999
Abstract
This paper presents a new compression technique for multispectral images. The proposed encoding algorithm is based on two steps: segmentation and transform coding. The segmentation step is based on a hierarchical tree-structured Markov random field model for the image, which is able to effectively take into account the spatial dependencies. After segmentation, class-adapted transform coding is used to decorrelate information both in the spectral and spatial domain. Simulation results show that the proposed technique exhibits a significant performance gain at very low bit rates, while assuring a satisfactory image quality.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.