Automatic Activity Detection in video-sequences
Event-Based indexing consist in automatically detecting key 
  moments corresponding to a particular activity into long video sequences. The 
  techniques developed for indexing can be used to detect the activities done 
  by a subject in a given video-sequence.
  To this aim, Manor and Irani [1] developed a similarity statistical measure 
  based on spatio-temporal features. This measure can be used for isolating and 
  clustering events without any prior knowledge of the types of events, their 
  models, or their temporal extent.

Figure 1: Activity segmentation from video-sequences [1]
In this project the student should implement such clustering 
  measure and test the performances in several video-sequences that he/she will 
  capture using the HW (cameras) available in the lab.
Reading:
[1] L.Zelnik-Manor and M. Irani, "Event-Based Video Analysis", IEEE Conference on Computer Vision and Pattern Recognition (CVPR), December 2001