Title :
Object oriented extraction of reserve resources area for cultivated land using RapidEye image data
Author :
Yanmin Yao ; Haiqing Si ; Deying Wang
Author_Institution :
Key Lab. of Agri-Inf., Beijing, China
Abstract :
Identify the amount and spatial distribution of reserve cultivatable land resources is the basis for its development to increase crop planting areas. Taking Jiaxiang county of Shandong Province of China as a case study, this paper conducted image segmentation and merge based on RapidEye image data (5m spatial resolution) after data preprocessing. Then, object-oriented approach was used to classify land use information and the reserve resources of arable land were extracted from them. The results showed: (1) 30% and 80% of the scale level and merge level for image segmentation and merge were chosen for getting better results of independent polygon division based on object-oriented approach; (2) Comparing with K near value method (KNN) and principal component analysis method (PCA), support vector machine (SVM) method had 78% of the highest overall accuracy for the supervised classification; (3) The overall land use classification accuracy was 90.4% verified by field survey data and 1:10000 land use map in 2011, Kappa coefficient was 0.8784. Therefore, using high spatial resolution image can improve the classification accuracy for the reserve cultivatable land resources; (4) Bare land, wild grassland, mudflats and reed land were the main reserve resources of cultivated land for the study region. The area was 2640 ha occupying 2.95% of the total land area only. The area of bare land and wild grassland accounts for 61% and 35% of the reserve cultivatable land resources. Thin soil thickness and lack of irrigation facilities were major limit factors for its development to cropland.
Keywords :
crops; feature extraction; geophysical image processing; image classification; image resolution; image segmentation; land use; object-oriented methods; principal component analysis; support vector machines; China; Jiaxiang county; KNN; PCA method; RapidEye image data; SVM method; Shandong Province; arable land reserve resources; bare land; cropland; cultivated land; data preprocessing; high spatial resolution image; image segmentation; independent polygon division; irrigation facilities; k near value method; land use information classification; land use map; merge level; mudflats; object oriented extraction approach; principal component analysis; reed land; reserve cultivatable land resource spatial distribution; reserve resources area; scale level; supervised classification; support vector machine; thin soil thickness; wild grassland; Abstracts; Accuracy; Data mining; Image segmentation; Remote sensing; Spatial resolution; Support vector machines; Jiaxiang county of China; RapidEye image; object-oriented classification; reserve resources of cultivated land;
Conference_Titel :
Agro-geoinformatics (Agro-geoinformatics 2014), Third International Conference on
Conference_Location :
Beijing
DOI :
10.1109/Agro-Geoinformatics.2014.6910671