Automatic Extraction of Forests from Historical Maps Based on Unsupervised Classification in the CIELab Color Space
نویسندگان
چکیده
Olds maps contain specific information (historical places, historical land cover, building footprints) Interesting for various studies about long-term changes of landscapes,urban development or coastlines evolution For few years, a lot of maps are available thanks to National Archives INTRODUCTION METHODOLOGY RESULTS CONCLUSION Traditional approach to capture objects in historical maps are based on user intervention (for digitizing) As well-known, very time-consuming, very subjective and not reproducible on large areas
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تاریخ انتشار 2013