Publication | Open Access
Automated Road Extraction from High Resolution Multispectral Imagery
63
Citations
12
References
2004
Year
Image ClassificationAce ComponentsImage AnalysisMachine VisionEngineeringSynthetic Aperture RadarPattern RecognitionMultispectral ImagingGeographyRemote SensingLand Cover MapSpectral ContentEdge DetectionRoad Centerline ExtractionRoad ExtractionImage SegmentationComputer VisionOptical Image Recognition
This work presents a novel methodology for fully automated road centerline extraction that exploits spectral content from high resolution multispectral images. Preliminary detection of candidate road centerline components is performed with Anti-parallel-edge Centerline Extraction (ACE). This is followed by constructing a road vector topology with a fuzzy grouping model that links nodes from a self-organized mapping of the ACE components. Following topology construction, a Self-Supervised Road Classification (SSRC) feedback loop is implemented to automate the process of training sample selection and refinement for a road class, as well as deriving practical spectral definitions for non-road classes. SSRC demonstrates a potential to provide dramatic improvement in road extraction results by exploiting spectral content. Road centerline extraction results are presented for three 1 m colorinfrared suburban scenes which show significant improvement following SSRC.
| Year | Citations | |
|---|---|---|
Page 1
Page 1