I am interested in understanding how probability estimates are calculated by random forests, both in general and specifically in Python's scikit-learn library (where probability estimated are returned by the predict_proba function).
The probabilities returned by a forest are the mean probabilities returned by the trees in the ensemble (docs). The probabilities returned by a single tree are the normalized class histograms of the leaf a sample lands in.
In addition to what Andreas/Dougal said,
when you train the RF, turn on compute_importances=True.