Title :
Relative Hidden Markov Models for Video-Based Evaluation of Motion Skills in Surgical Training
Author :
Qiang Zhang ; Baoxin Li
Author_Institution :
Comput. Sci. & Eng., Arizona State Univ., Tempe, AZ, USA
Abstract :
A proper temporal model is essential to analysis tasks involving sequential data. In computer-assisted surgical training, which is the focus of this study, obtaining accurate temporal models is a key step towards automated skill-rating. Conventional learning approaches can have only limited success in this domain due to insufficient amount of data with accurate labels. We propose a novel formulation termed Relative Hidden Markov Model and develop algorithms for obtaining a solution under this formulation. The method requires only relative ranking between input pairs, which are readily available from training sessions in the target application, hence alleviating the requirement on data labeling. The proposed algorithm learns a model from the training data so that the attribute under consideration is linked to the likelihood of the input, hence supporting comparing new sequences. For evaluation, synthetic data are first used to assess the performance of the approach, and then we experiment with real videos from a widely-adopted surgical training platform. Experimental results suggest that the proposed approach provides a promising solution to video-based motion skill evaluation. To further illustrate the potential of generalizing the method to other applications of temporal analysis, we also report experiments on using our model on speech-based emotion recognition.
Keywords :
biomedical education; computer based training; emotion recognition; hidden Markov models; medical computing; speech recognition; surgery; automated skill-rating; computer-assisted surgical training; data labeling; input pairs; motion skills; performance assessment; relative hidden Markov models; relative ranking; sequential data analysis; speech-based emotion recognition; synthetic data; temporal model; training data; training sessions; video-based evaluation; video-based motion skill evaluation; Analytical models; Computational modeling; Data models; Hidden Markov models; Surgery; Training; Training data; Emotion Recognition; Relative Hidden Markov Model; Relative Learning; Relative hidden markov model; Surgical Skill; Temporal Model; emotion recognition; relative learning; surgical skill; temporal model;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2361121