| // Ceres Solver - A fast non-linear least squares minimizer | 
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 | // Author: sameeragarwal@google.com (Sameer Agarwal) | 
 | // | 
 | // An implementation of the Canonical Views clustering algorithm from | 
 | // "Scene Summarization for Online Image Collections", Ian Simon, Noah | 
 | // Snavely, Steven M. Seitz, ICCV 2007. | 
 | // | 
 | // More details can be found at | 
 | // http://grail.cs.washington.edu/projects/canonview/ | 
 | // | 
 | // Ceres uses this algorithm to perform view clustering for | 
 | // constructing visibility based preconditioners. | 
 |  | 
 | #ifndef CERES_INTERNAL_CANONICAL_VIEWS_CLUSTERING_H_ | 
 | #define CERES_INTERNAL_CANONICAL_VIEWS_CLUSTERING_H_ | 
 |  | 
 | #include <unordered_map> | 
 | #include <vector> | 
 |  | 
 | #include "ceres/graph.h" | 
 |  | 
 | namespace ceres { | 
 | namespace internal { | 
 |  | 
 | struct CanonicalViewsClusteringOptions; | 
 |  | 
 | // Compute a partitioning of the vertices of the graph using the | 
 | // canonical views clustering algorithm. | 
 | // | 
 | // In the following we will use the terms vertices and views | 
 | // interchangeably.  Given a weighted Graph G(V,E), the canonical views | 
 | // of G are the set of vertices that best "summarize" the content | 
 | // of the graph. If w_ij i s the weight connecting the vertex i to | 
 | // vertex j, and C is the set of canonical views. Then the objective | 
 | // of the canonical views algorithm is | 
 | // | 
 | //   E[C] = sum_[i in V] max_[j in C] w_ij | 
 | //          - size_penalty_weight * |C| | 
 | //          - similarity_penalty_weight * sum_[i in C, j in C, j > i] w_ij | 
 | // | 
 | // alpha is the size penalty that penalizes large number of canonical | 
 | // views. | 
 | // | 
 | // beta is the similarity penalty that penalizes canonical views that | 
 | // are too similar to other canonical views. | 
 | // | 
 | // Thus the canonical views algorithm tries to find a canonical view | 
 | // for each vertex in the graph which best explains it, while trying | 
 | // to minimize the number of canonical views and the overlap between | 
 | // them. | 
 | // | 
 | // We further augment the above objective function by allowing for per | 
 | // vertex weights, higher weights indicating a higher preference for | 
 | // being chosen as a canonical view. Thus if w_i is the vertex weight | 
 | // for vertex i, the objective function is then | 
 | // | 
 | //   E[C] = sum_[i in V] max_[j in C] w_ij | 
 | //          - size_penalty_weight * |C| | 
 | //          - similarity_penalty_weight * sum_[i in C, j in C, j > i] w_ij | 
 | //          + view_score_weight * sum_[i in C] w_i | 
 | // | 
 | // centers will contain the vertices that are the identified | 
 | // as the canonical views/cluster centers, and membership is a map | 
 | // from vertices to cluster_ids. The i^th cluster center corresponds | 
 | // to the i^th cluster. | 
 | // | 
 | // It is possible depending on the configuration of the clustering | 
 | // algorithm that some of the vertices may not be assigned to any | 
 | // cluster. In this case they are assigned to a cluster with id = -1; | 
 | void ComputeCanonicalViewsClustering( | 
 |     const CanonicalViewsClusteringOptions& options, | 
 |     const WeightedGraph<int>& graph, | 
 |     std::vector<int>* centers, | 
 |     std::unordered_map<int, int>* membership); | 
 |  | 
 | struct CanonicalViewsClusteringOptions { | 
 |   // The minimum number of canonical views to compute. | 
 |   int min_views = 3; | 
 |  | 
 |   // Penalty weight for the number of canonical views.  A higher | 
 |   // number will result in fewer canonical views. | 
 |   double size_penalty_weight = 5.75; | 
 |  | 
 |   // Penalty weight for the diversity (orthogonality) of the | 
 |   // canonical views.  A higher number will encourage less similar | 
 |   // canonical views. | 
 |   double similarity_penalty_weight = 100; | 
 |  | 
 |   // Weight for per-view scores.  Lower weight places less | 
 |   // confidence in the view scores. | 
 |   double view_score_weight = 0.0; | 
 | }; | 
 |  | 
 | }  // namespace internal | 
 | }  // namespace ceres | 
 |  | 
 | #endif  // CERES_INTERNAL_CANONICAL_VIEWS_CLUSTERING_H_ |