Recognition of Alphabetical Hand Gestures Using Hidden Markov Model
نویسندگان
چکیده
The use of hand gesture provides an attractive alternative to cumbersome interface devices for human-computer interaction (HCI). In particular, visual interpretation of hand gestures can help achieve easy and natural comprehension for HCI. Many methods for hand gesture recognition using visual analysis have been proposed such as syntactical analysis, neural network (NN), and hidden Markov model (HMM)s. In our research, HMMs are proposed for alphabetical hand gesture recognition. In the preprocessing stage, the proposed approach consists of three different procedures for hand localization, hand tracking and gesture spotting. The hand location procedure detects the candidated regions on the basis of skin color and motion in an image by using a color histogram matching and time-varying edge difference techniques. The hand tracking algorithm finds the centroid of a moving hand region, connect those centroids, and produces a trajectory. The spotting algorithm divides the trajectory into real and meaningless gestures. In constructing a feature database, the proposed approach uses the weighted ρ-φ-ν feature code, and employ a k-means algorithm for the codebook of HMM. In our experiments, 1,300 alphabetical and 1,300 untrained gestures are used for training and testing, respectively. Those experimental results demonstrate that the proposed approach yields a higher and satisfactory recognition rate for the images with different sizes, shapes and skew angles. key words: gesture recognition, hidden Markov model(HMM)
منابع مشابه
3D Hand Motion Evaluation Using HMM
Gesture and motion recognition are needed for a variety of applications. The use of human hand motions as a natural interface tool has motivated researchers to conduct research in the modeling, analysis and recognition of various hand movements. In particular, human-computer intelligent interaction has been a focus of research in vision-based gesture recognition. In this work, we introduce a 3-...
متن کاملHand Gesture Recognition Using Input-Output Hidden Markov Models
A new hand gesture recognition method based on Input– Output Hidden Markov Models is presented. This method deals with the dynamic aspects of gestures. Gestures are extracted from a sequence of video images by tracking the skin–color blobs corresponding to the hand into a body– face space centered on the face of the user. Our goal is to recognize two classes of gestures: deictic and symbolic.
متن کاملGesture Recognition Using Hidden Markov Model
Hand gestures are used by many applications, such as mobile phone, robots, television and gaming purposes. In order to employ hand gestures as input for a control application, it requires recognition of gesture with a high precision rate, with minimum probability of error. In the research presented, the signs are executed with one hand as it is sufficient for many everyday applications. The ges...
متن کاملHMM and IOHMM for the Recognition of Mono- and Bi-Manual 3D Hand Gestures
In this paper, we address the problem of the recognition of isolated complex monoand bi-manual hand gestures. In the proposed system, hand gestures are represented by the 3D trajectories of blobs obtained by tracking colored body parts. In this paper, we study the results obtained on a complex database of monoand bi-manual gestures. These results are obtained by using Input/Output Hidden Markov...
متن کاملBi-manual 3d Hand Gestures
In this paper, we address the problem of the recognition of isolated complex monoand bi-manual hand gestures. In the proposed system, hand gestures are represented by the 3D trajectories of blobs obtained by tracking colored body parts. In this paper, we study the results obtained on a complex database of monoand bi-manual gestures. These results are obtained by using Input/Output Hidden Markov...
متن کامل