We found a match
Your institution may have rights to this item. Sign in to continue.
- Title
Quality Assessment Method for Linear Feature Simplification Based on Multi-Scale Spatial Uncertainty.
- Authors
Jingsheng Zhai; Zhaoxing Li; Fang Wu; Hang Xie; Bo Zou
- Abstract
This study discusses a method for quantitative quality assessment for the simplification of linear features. Considering the multi-scale nature of linear features, this paper combines the improved Douglas-Peucker method without threshold and the multiway tree model to construct a weighted hierarchical linear feature representation model called the Douglas-Peucker Multiway Tree (DMC-tree). Subsequently, the uncertainty computation is conducted from the root of the DMC-Tree top-down level by level to obtain the quality indexes. Then, the quality index of the whole linear feature is obtained by combining the indexes of every layer together with their weights. The results of the presented method are compared with those of the length ratio method and the Hausdorff distance method. The results show the advantages of the presented method over the others, including (1) its sensitivity to feature points of multiple scales, (2) the quantitative characteristics of the indexes, and (3) the finer granularity in assessment.
- Subjects
HAUSDORFF spaces; MULTILEVEL models; MULTIPLE scale method
- Publication
ISPRS International Journal of Geo-Information, 2017, Vol 6, Issue 6, p184
- ISSN
2220-9964
- Publication type
Article
- DOI
10.3390/ijgi6060184