土地利用图斑综合是实现其多尺度表达的关键技术,主要包括相邻图斑的融合、相离且语义邻近图斑的聚合、狭长图斑的综合以及要素边线的化简等。通过以下4种方法实现图斑综合:①以要素间语义相似度为先决条件并顾及空间拓扑关系建立邻近度分析模型,通过模型检索要素的最邻近图斑实现数据融合;②以相离要素缓冲区交集中的节点建立多边形要素填补桥梁区域实现要素聚合;③以相邻要素的缓冲区将狭长区域剖分,并融合到周围要素的方法来实现狭长图斑的综合;④以Douglas-Peucker算法实现要素边线化简。上述方法对普通图斑及特征图斑均提出了各自适应的综合算法。实验结果表明上述模型及算法能最大限度的保证各地类面积平衡、也能有效控制要素变形、合理压缩数据并保证地图简洁、美观,保证自动化制图综合的简捷高效。
Generalization of land use patch is the key technology in the multi-scale representation of land-use data.It consists essentially of the combination of adjacent patch,the aggregation of separated semantic similar patches,the decomposition and merging of strip patches and the simplification of boundaries of features,etc.This article has gain it from the following four methods: 1) the proximity analysis model was built based on the semantic similarity of features and the spatial topological relationship.and then the nearest adjacent patch is retrieved through it to complete generalization;2) Polygon elements are established to fill bridge areas using the nodes that contained separated factor buffer intersections;3) The narrow regions will be split by its adjacent features buffer,and then merged with the surrounding features to integrate the regions;4) The Douglas-Peucker algorithm is used to conduct line simplification.The above methods put respective synthesis algorithm for general and particular patches.And the experiment result from the Beihai sub-district of Lushun Port,Dalian City,shows that the models and algorithms can maximally balance area of various types of land,effectively control elements distortion,reasonably compress data to ensure the appearance of map and easiness of automatic cartography generalization.