Aravind HarikumarAnil KumarAlfred SteinP. L. N. RajuY. V. N. Krishna Murthy
This article presents a hybrid fuzzy classifier for effective land-use/land-cover (LULC) mapping. It discusses a Bayesian method of incorporating spatial contextual information into the fuzzy noise classifier (FNC). The FNC was chosen as it detects noise using spectral information more efficiently than its fuzzy counterparts. The spatial information at the level of the second-order pixel neighbourhood was modelled using Markov random fields (MRFs). Spatial contextual information was added to the MRF using different adaptive interaction functions. These help to avoid over-smoothing at the class boundaries. The hybrid classifier was applied to advanced wide-field sensor (AWiFS) and linear imaging self-scanning sensor-III (LISS-III) images from a rural area in India. Validation was done with a LISS-IV image from the same area. The highest increase in accuracy among the adaptive functions was 4.1% and 2.1% for AWiFS and LISS-III images, respectively. The paper concludes that incorporation of spatial contextual information into the fuzzy noise classifier helps in achieving a more realistic and accurate classification of satellite images.
Anas Tukur BalarabeIvan JordanovAFH AlhichriR AnwerA BalarabeI JordanovA BalarabeI JordanovQ BiC Broni-BediakoG ChengF CholletE GoceriN HeP HelberF HuF LiL LiZ LiY LiuC HuangY LiuY ZhongQ QinA PathakM PandeyS RautarayA ShabbirH WangY YuQ WangQ WangG XiaJ XieY YangS NewsamY YuF LiuB YuanB ZhaoX ZhengY YuanX Lu
Chunlei HuoKeming ChenZhixin ZhouHanqing Lu
Jue WangWenchao LiuLong MaHe ChenLiang Chen