Author :
Graesser, Jordan ; Cheriyadat, Anil ; Vatsavai, Ranga Raju ; Chandola, Varun ; Long, Jordan ; Bright, Eddie
Author_Institution :
Oak Ridge Nat. Lab., Oak Ridge, TN, USA
Abstract :
The high rate of global urbanization has resulted in a rapid increase in informal settlements, which can be defined as unplanned, unauthorized, and/or unstructured housing. Techniques for efficiently mapping these settlement boundaries can benefit various decision making bodies. From a remote sensing perspective, informal settlements share unique spatial characteristics that distinguish them from other types of structures (e.g., industrial, commercial, and formal residential). These spatial characteristics are often captured in high spatial resolution satellite imagery. We analyzed the role of spatial, structural, and contextual features (e.g., GLCM, Histogram of Oriented Gradients, Line Support Regions, Lacunarity) for urban neighborhood mapping, and computed several low-level image features at multiple scales to characterize local neighborhoods. The decision parameters to classify formal-, informal-, and non-settlement classes were learned under Decision Trees and a supervised classification framework. Experiments were conducted on high-resolution satellite imagery from the CitySphere collection, and four different cities (i.e., Caracas, Kabul, Kandahar, and La Paz) with varying spatial characteristics were represented. Overall accuracy ranged from 85% in La Paz, Bolivia, to 92% in Kandahar, Afghanistan. While the disparities between formal and informal neighborhoods varied greatly, many of the image statistics tested proved robust.
Keywords :
decision making; feature extraction; geophysical image processing; image classification; image resolution; terrain mapping; Afghanistan; Bolivia; Caracas; Decision Trees; GLCM; Kabul; Kandahar; La Paz; contextual feature analysis; decision making bodies; decision parameters; high global urbanization rate; high spatial resolution satellite image; image based characterization; image statistical analysis; line support regions; local neighborhood characterization; low-level image features; oriented gradient histogram; remote sensing; spatial characteristics; spatial feature analysis; structural feature analysis; supervised classification framework; unstructured housing analysis; urban landscape; urban neighborhood mapping; Buildings; Cities and towns; Feature extraction; Histograms; Remote sensing; Spatial resolution; Urban areas; Formal; high-resolution; image features; informal; urban;