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dc.contributor.authorAriyanto, Gunawan
dc.contributor.authorLi, Pak Keung Patrick
dc.contributor.authorKwok, Hing-Wah
dc.contributor.authorYan, Ge
dc.date.accessioned2018-01-26T06:38:29Z
dc.date.available2018-01-26T06:38:29Z
dc.date.issued2007-01
dc.identifier.citation1. Birk, H.; Moeslund,T.B., “Recognizing Gesture From the Hand Alphabet Using Principal Component Analysis”, Master’s Thesis, Laborarory of image Analysis, Aalborg University, Denmark, 1996. 2. Bradski, G.R., “Computer Visions Face Tracking As A componet of A perceptual User Interface”, Workshop on Applications of Computer Vision, Princeton, NJ, 1998, page 214-219. 3. Juan,W,; Uri, K., “Hand Gesture Telerobotic System Using Fuzzy Clustering Algorithms,” Integrated Project Report, Ben-Gurion University of the Negev,2001. 4. Sze,I.; Kong,A.; Li,J., “Robot Control Using Gesture”,Experimental Robotics Project Report, School of Computer Science and Engineering,UNSW,Sydney,2004. 5. Roth,M.,; Freeman,W., “Orientation Histogram for Hand Gesture Recognition”,International Workshop on Automatic Face and Gesture Recognition, Zurich, 1995. 6. Open Source Computer Vision Library Reference Manual, Intel Corporation, 2001.in_ID
dc.identifier.urihttp://hdl.handle.net/11617/9555
dc.description.abstractHand gesture recognition is one of well-research vision system projects. There are numerous objects which use different techniques to tackle different aspect of the problem. In the paper, we present a project to use hand gesture recognition system for controlling a 5 degreeof freedom robotic arm, i.e. SCORBOT. We use cam-shift Algorithm, Principal Component Analys (PCA) and Artificial Neural Networks (ANNs) to build the image-based hand gesture recognition system. Cam-shift is used to track the hand image and PCA is use to reduce the feature dimensions of image. At the end of the recognition system, we employ Artificial Neural Network to classify the image of static hand gesture. We have successfully developed natural language to control the robot and our system is able to recognize six different static hand gesture (proses), handle some noise of image acquistous process, and implement some modes of robot control. The average performance of the system to recognize the static hand gestures is larger than 90% and the robot is able to do some simple jobs by using hand gesture language commands as its input.in_ID
dc.language.isoenin_ID
dc.publisherProceedings of National Conference on Computer Science & Information Technology 2007in_ID
dc.titleHand Gesture Recognition Using Neural Networks For Robotic Arm Controlin_ID
dc.typeArticlein_ID


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