Coastal land-cover mapping: a comparison of PHILLS, HyMAP, and PROBE2 airborne hyperspectral imagery

2004 ◽  
Author(s):  
Charles M. Bachmann ◽  
Timothy F. Donato ◽  
Robert A. Fusina ◽  
Richard Lathrop ◽  
Joseph Geib ◽  
...  
Author(s):  
S. S. P. Vithana ◽  
A. M. R. Abeysekara ◽  
T. S. J. Oorloff ◽  
R. A. A. Rupasinghe ◽  
H. M. V. R. Herath ◽  
...  

2021 ◽  
Vol 13 (8) ◽  
pp. 1493
Author(s):  
Jifa Chen ◽  
Guojun Zhai ◽  
Gang Chen ◽  
Bo Fang ◽  
Ping Zhou ◽  
...  

Coastal land cover mapping (CLCM) across image domains presents a fundamental and challenging segmentation task. Although adversaries-based domain adaptation methods have been proposed to address this issue, they always implement distribution alignment via a global discriminator while ignoring the data structure. Additionally, the low inter-class variances and intricate spatial details of coastal objects may entail poor presentation. Therefore, this paper proposes a category-space constrained adversarial method to execute category-level adaptive CLCM. Focusing on the underlying category information, we introduce a category-level adversarial framework to align semantic features. We summarize two diverse strategies to extract category-wise domain labels for source and target domains, where the latter is driven by self-supervised learning. Meanwhile, we generalize the lightweight adaptation module to multiple levels across a robust baseline, aiming to fine-tune the features at different spatial scales. Furthermore, the self-supervised learning approach is also leveraged as an improvement strategy to optimize the result within segmented training. We examine our method on two converse adaptation tasks and compare them with other state-of-the-art models. The overall visualization results and evaluation metrics demonstrate that the proposed method achieves excellent performance in the domain adaptation CLCM with high-resolution remotely sensed images.


2019 ◽  
Vol 3 (1) ◽  
pp. 14-27
Author(s):  
Barry Haack ◽  
Ron Mahabir

This analysis determined the best individual band and combinations of various numbers of bands for land use land cover mapping for three sites in Peru. The data included Landsat Thematic Mapper (TM) optical data, PALSAR L-band dual-polarized radar, and derived radar texture images. Spectral signatures were first obtained for each site class and separability between classes determined using divergence measures. Results show that the best single band for analysis was a TM band, which was different for each site. For two of the three sites, the second best band was a radar texture image from a large window size. For all sites the best three bands included two TM bands and a radar texture image. The original PALSAR bands were of limited value. Finally upon further analysis it was determined that no more than six bands were needed for viable classification at each study site.


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