Technical Program

Paper Detail

Paper IDA-3-3.2
Paper Title Human Hand Movement Recognition based on HMM with Hyperparameters Optimized by Maximum Mutual Information
Authors Ruoshi Wen, Qiang Wang, Xiang Ma, Harbin Institute of Technology, China; Zhibin Li, The University of Edinburgh, United Kingdom
Session A-3-3: Behavior Measurement and Analysis
TimeThursday, 10 December, 17:30 - 19:30
Presentation Time:Thursday, 10 December, 17:45 - 18:00 Check your Time Zone
All times are in New Zealand Time (UTC +13)
Topic Biomedical Signal Processing and Systems (BioSiPS):
Abstract Performing dexterous and versatile movements is essential for multi-finger manipulators for human-robot collaboration, and designing effective control methods for the robotic manipulator is challenging. To recognize human hand movements, we used surface electromyography (sEMG) for sensing myoelectric activity due to its portability and low-cost compared to cameras, and proposed a hidden Markov model (HMM) based method to characterize the transition of action primitives. For building HMMs for hand movements, the hyperparameters, including features, the window length and the number of states, are optimized by the maximum mutual information (MMI) criterion. The optimal features - marginal Discrete Wavelet Transform (mDWT) and mean value - are extracted from multichannel signals acquired from 12 electrodes. Our proposed method is validated by recognizing 40 hand movements from activities of daily living (ADL) in the second NinaPro database. Using MMI as the optimization criterion for hyperparameters, we have improved the average recognition accuracy over 40 subjects in the database from 92.02% to 97.32%.