Chunyan Lu, Jing Wang
Proceedings Volume Second International Conference on Space Information Technology, 67957X (2007) https://doi.org/10.1117/12.780351
With the development of science and technology, a number of environmental issues, such as sustainable development,
climate change, environmental pollution, and land degradation become serious. Greater attention has been attached to
environmental protection. The government gradually launched some eco--environmental construction projects. In 1999,
China begin to carry out the project of Grain-for-Green in the west, to improve the eco-environment, and it make some
good effect, but there are some questions that still can not be answered. How about the new grass or forest? Where are
they? How can we do in the future? To answer these questions, the government began to monitor the eco-environment,
based on remote sensing technology. Geography information can be attained timely, but the issue of uncertainty has
become increasingly recognized, and this uncertainty affects the reliability of applications using the data. This article
analyzed the process of eco-environment monitoring, the uncertainty of geography information, and discussed the
methods of data quality control.
The Spot5 span data and multi-spectral data in 2003(2002) were used, combined with land use survey data at the scale of
1:10,000, topography data at the scale of 1:10,000, and the local Grain-for-Green project map. Also the social and
economic data were collected. Eco-environmental monitoring is a process which consists of several steps, such as image
geometric correction, image matching, information extraction, and so on. Based on visual and automated method, land
information turned to grass and forest from cultivated land was obtained by comparing the information form remote
sensing data with the land survey data, and local Grain-for-Green project data, combined with field survey. According to
the process, the uncertainty in the process was analyzed. Positional uncertainty, attribute uncertainty, and thematic
uncertainty was obvious. Positional uncertainty mainly derived from image geometric correction, such as data resource,
the number and spatial distribution of the control points are important resource of uncertainty. Attribution uncertainty
mainly derived from the process of information extraction. Land classification system, artificial error was the main factor
induced uncertainty. Concept defined was not clear, and it reduced thematic uncertainty.
According to the resource of uncertainty, data quality control methods were put forward to improve the data quality. At
first, it is more important to choose appropriate remote sensing data and other basic data. Secondly, the accuracy of
digital orthophoto map should be controlled. Thirdly, it is necessary to check the result data according to relative data
quality criterion to guarantee GIS data quality.