Comparison of Recognition Accuracy on Dynamic Hand Gesture Using Feature Selection
Dynamic Hand Gesture Recognition is carried out in various studies to read patterns. Various sensors can be used to capture dynamic hand movement patterns. The results of the initial reading are usually in the form of raw data that must pass initial processing. Advanced processing is carried out to...
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Published in | 2018 International Conference on Computer Engineering, Network and Intelligent Multimedia (CENIM) pp. 270 - 274 |
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Main Authors | , , , , , , , , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
01.11.2018
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Online Access | Get full text |
DOI | 10.1109/CENIM.2018.8711397 |
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Abstract | Dynamic Hand Gesture Recognition is carried out in various studies to read patterns. Various sensors can be used to capture dynamic hand movement patterns. The results of the initial reading are usually in the form of raw data that must pass initial processing. Advanced processing is carried out to obtain features that will be trained using various classifiers. The recognition process without feature selection activities will reduce the accuracy of pattern recognition during the classification process. Seeing the many shortcomings in the implementation of the initial data processing, this study will present some initial processing examples to produce features that are relatively good for the data training process. The method used is the gaussian mixture model and the selection of predictors for the classification process. The sensor for recording dynamic hand movements used in this study is Leap-motion. There are three dynamic hand gestures were used in this study. The data used were 4609 coordinates spread in 30 features. The classifiers used are k-NN with Euclidean distance metric without feature selection process compare to the process with feature selection. The results obtained from this study are the availability of examples of feature selection models in the form of gaussian mixtures and some accuracy of the results of processing comparison. The lowest prediction, without and with feature prediction, has a slightly range from 99.7% to 100%. |
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AbstractList | Dynamic Hand Gesture Recognition is carried out in various studies to read patterns. Various sensors can be used to capture dynamic hand movement patterns. The results of the initial reading are usually in the form of raw data that must pass initial processing. Advanced processing is carried out to obtain features that will be trained using various classifiers. The recognition process without feature selection activities will reduce the accuracy of pattern recognition during the classification process. Seeing the many shortcomings in the implementation of the initial data processing, this study will present some initial processing examples to produce features that are relatively good for the data training process. The method used is the gaussian mixture model and the selection of predictors for the classification process. The sensor for recording dynamic hand movements used in this study is Leap-motion. There are three dynamic hand gestures were used in this study. The data used were 4609 coordinates spread in 30 features. The classifiers used are k-NN with Euclidean distance metric without feature selection process compare to the process with feature selection. The results obtained from this study are the availability of examples of feature selection models in the form of gaussian mixtures and some accuracy of the results of processing comparison. The lowest prediction, without and with feature prediction, has a slightly range from 99.7% to 100%. |
Author | Ngaga, Emerensiana Batarius, Patrisius Purnomo, Mauridhi Hery Nani, Paskalis Andrianus Sumpeno, Surya Mau, Sisilia Daeng Bakka Mamulak, Natalia Magdalena Rafu Siki, Yovinia Carmeneja Hoar Rosiani, Ulla Delfana Sooai, Adri Gabriel |
Author_xml | – sequence: 1 givenname: Adri Gabriel surname: Sooai fullname: Sooai, Adri Gabriel organization: Dept. of Electrical Engineering, Institut Teknologi Sepuluh Nopember, Kupang, Indonesia – sequence: 2 givenname: Patrisius surname: Batarius fullname: Batarius, Patrisius organization: Dept. of Computer Science, Universitas Katolik Widya Mandira, Kupan, Indonesia – sequence: 3 givenname: Yovinia Carmeneja Hoar surname: Siki fullname: Siki, Yovinia Carmeneja Hoar organization: Dept. of Computer Science, Universitas Katolik Widya Mandira, Kupan, Indonesia – sequence: 4 givenname: Paskalis Andrianus surname: Nani fullname: Nani, Paskalis Andrianus organization: Dept. of Computer Science, Universitas Katolik Widya Mandira, Kupan, Indonesia – sequence: 5 givenname: Natalia Magdalena Rafu surname: Mamulak fullname: Mamulak, Natalia Magdalena Rafu organization: Dept. of Computer Science, Universitas Katolik Widya Mandira, Kupan, Indonesia – sequence: 6 givenname: Emerensiana surname: Ngaga fullname: Ngaga, Emerensiana organization: Dept. of Computer Science, Universitas Katolik Widya Mandira, Kupan, Indonesia – sequence: 7 givenname: Ulla Delfana surname: Rosiani fullname: Rosiani, Ulla Delfana organization: Dept. of Electrical Engineering, Institut Teknologi Sepuluh Nopember, Surabaya, Indonesia – sequence: 8 givenname: Surya surname: Sumpeno fullname: Sumpeno, Surya organization: Dept. of Electrical Engineering, Institut Teknologi Sepuluh Nopember, Surabaya, Indonesia – sequence: 9 givenname: Mauridhi Hery surname: Purnomo fullname: Purnomo, Mauridhi Hery organization: Dept. of Electrical Engineering, Institut Teknologi Sepuluh Nopember, Surabaya, Indonesia – sequence: 10 givenname: Sisilia Daeng Bakka surname: Mau fullname: Mau, Sisilia Daeng Bakka organization: Dept. of Computer Science, Universitas Katolik Widya Mandira, Kupan, Indonesia |
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Snippet | Dynamic Hand Gesture Recognition is carried out in various studies to read patterns. Various sensors can be used to capture dynamic hand movement patterns. The... |
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SubjectTerms | Computer science Distance Metric Dynamic Hand Gesture Feature extraction Feature Selection Gaussian mixture model Mathematical model Pattern recognition Recognition Accuracy Sensors |
Title | Comparison of Recognition Accuracy on Dynamic Hand Gesture Using Feature Selection |
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