Research Article

Effective and Generalizable Graph-Based Clustering for Faces in the Wild

Figure 4

Proposed face clustering method overview. (a) Faces graph. Each vertex represents a face, and an edge is drawn between faces with distance less than a given threshold. (b) Initial clustering result. Each cluster is delimited by dotted lines. (c) Graph obtained by considering each CW cluster as a vertex and drawing an edge between two clusters if they are neighbors. (d) Clustering resulting from processing the graph in Figure 4(c), using the CW algorithm. (e) Final clustering obtained.
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