We introduced an algorithm for sequence alignment, based on maximizing local space-time correlations. Our algorithm aligns
sequences of the same action performed at different times and places by different people, possibly at different speeds, and
wearing different clothes. Moreover, the algorithm offers a unified approach to the problem of sequence alignment for a wide
range of scenarios (e.g., sequence pairs taken with stationary or jointly moving cameras, with the same or different photometric
properties, with or without moving objects). Our algorithm is applied directly to the dense space-time intensity information
of the two sequences (or to filtered versions of them). This is done without prior segmentation of foreground moving objects,
and without prior detection of corresponding features across the sequences. Examples of challenging sequences with complex
actions are shown, including ballet dancing, actions in the presence of other complex scene dynamics (clutter), as well as
multi-sensor sequence pairs.