AIM The understanding of surgical gesture, by means of a measuring apparatus, can play a key role in the evaluation of surgical performance. To this aim, a neural network classification algorithm can be helpful, since it combines good generalization performances along with a parsimonious architecture when dealing with high dimensional classification problems. We present its use as a surgical training tool for both laparoscopic and open surgery, a field of research highly underrepresented in the surgical teaching scenario. We operated a bounding box decomposition of surgeon’s hand movements analysis and gesture recognition during training of novice surgeons. This feature was applied to analyze trajectories of surgeon’s wrist and finger pos...