Forget the usual reply of k-means. It's simple, but simply not appropriate for this task.
Have a look at DBSCAN (Wikipedia). It's right on target for what you need. You can specify a radius (if you use the great circle distance, you can use meters!) and a minimum cluster size. If your clusters vary largly in density, and DBSCAN merges clusters it shouldn't, you can try OPTICS (Wikipedia), which will not even need the epsilon parameter, just a minimum cluster size. It does however produce hierarchical clusters. So you will have e.g. a cluster of eiffel tower pictures, inside of a cluster of Paris pictures.
A nice property of DBSCAN is that it has a concept of noise. Objects that do not belong to a cluster.