AM-106 - Error-based Uncertainty
The largest contributing factor to spatial data uncertainty is error. Error is defined as the departure of a measure from its true value. Uncertainty results from: (1) a lack of knowledge of the extent and of the expression of errors and (2) their propagation through analyses. Understanding error and its sources is key to addressing error-based uncertainty in geospatial practice. This entry presents a sample of issues related to error and error based uncertainty in spatial data. These consist of (1) types of error in spatial data, (2) the special case of scale and its relationship to error and (3) approaches to quantifying error in spatial data.
DA-30 - GIS&T and Landscape Ecology
Landscape ecology is a transdisciplinary science dedicated to the study of the interactions among landscape heterogeneity, humans, and natural system. Since its inception in the mid-20th Century, landscape ecology has been strongly intertwined with spatial technologies, from aerial photography to modern space-borne sensors. Satellite-based remote sensing is among the primary data sources for contemporary landscape ecology analysis, while geographic information systems provide tools to analyze the spatial configurations of satellite derived classifications, simulate landscapes and species distributions, quantify landscape change, and elucidate the reciprocal relationship between spatial patterns and ecological processes. Additionally, global navigation satellite systems, such as GPS, Galileo, and GLONASS, augment these datasets and may be used for data collection to aid landscape ecology research. Emerging geospatial technologies, such as unoccupied aerial systems and micro- and nanosatellites, also have a role to play in landscape ecology.