Digital libraries are a core information technology. When the stored data is complex, e.g. high-resolution images or molecular protein structures, simple query types like the exact match query are hardly applicable. In such environments similarity queries, particularly range queries and k-nearest neighbor queries, turn out to be important query types. Numerous approaches have been proposed for the processing of similarity queries which mainly concentrate on highly dynamic data sets where insertion, update, and deletion operations permanently occur. However, only little effort has been devoted to the case of rather static data sets - a case that frequently occurs in digital libraries. In this paper, we introduce a novel technique for efficient similarity search on top of static or rarely changing data sets. In particular, we propose a special sorting order on the data objects which can be effectively exploited to substantially reduce the total query time of similarity queries. An exten...