Supervised Training of Conversive Hidden Non-markovian Models: Increasing Usability for Gesture Recognition
نویسندگان
چکیده
Hidden non-Markovian Models (HnMMs) were introduced and formalized as an extension of Hidden Markov Models for the analysis of partially observable stochastic processes. Their main advantage over HMM is the possibility to model arbitrary distributions for state transition duration, so that the unobservable stochastic process needs not to be Markovian. Besides academic examples, HnMMs were applied to gesture recognition and performed well in distinguishing similar gestures with different execution speeds. While the Proxel-Method enabled the evaluation for arbitrary HnMMs, there was no opportunity to train these models. Therefore, the models for different gestures had to be parameterized manually. This fact reduced the applicability in real gesture recognition dramatically. This paper presents a solution to this problem, introducing a supervised training approach that increases the applicability of HnMMs in gesture recognition.
منابع مشابه
A new approach for touch gesture recognition: Conversive Hidden non-Markovian Models
With the current boom of touch devices the recognition of touch gestures is becoming an important field of research. Performing such gestures can be seen as a stochastic process, as there can be many little differences between different executions. Therefore stochastic models like Hidden Markov Models have already been applied to gesture recognition. Although the modelling possibilities of Hidd...
متن کاملModeling of Gestures with Differing Execution Speeds: Are Hidden Non-markovian Models Applicable for Gesture Recognition
Gesture recognition is an important subtask of systems implementing human-machine-interaction. Hidden Markov Models achieve good results for gesture recognition in real-time supporting a low error rate. However, the distinction of gestures with different execution speeds is difficult. Hidden non-Markovian Models provide an approach to model time dependent state transitions to eliminate these pr...
متن کاملEvaluating a New Conversive Hidden non-Markovian Model Approach for Online Movement Trajectory Verification
This paper presents further research on an implemented classification and verification system that employs a novel approach for stochastically modelling movement trajectories. The models are based on Conversive Hidden non-Markovian Models that are especially suited to mimic temporal dynamics of time series as in contrast to the relative Hidden Markov Models(HMM) and the dynamic time warping(DTW...
متن کاملMAN-MACHINE INTERACTION SYSTEM FOR SUBJECT INDEPENDENT SIGN LANGUAGE RECOGNITION USING FUZZY HIDDEN MARKOV MODEL
Sign language recognition has spawned more and more interest in human–computer interaction society. The major challenge that SLR recognition faces now is developing methods that will scale well with increasing vocabulary size with a limited set of training data for the signer independent application. The automatic SLR based on hidden Markov models (HMMs) is very sensitive to gesture's shape inf...
متن کاملPerson-Independent Continuous Online Recognition of Gestures
This paper presents a gesture recognition system based on Hidden Markov Models. It has several user friendly capabilities like person-independent and backgroundindependent recognition. It can distinguish between up to 24 different gestures. An improved system is able to recognize gestures continuously and output the result with no noticeable delay.
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2012