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http://dx.doi.org/10.14372/IEMEK.2019.14.5.277

Efficient Hyperplane Generation Techniques for Human Activity Classification in Multiple-Event Sensors Based Smart Home  

Chang, Juneseo (Daegu Science High School)
Kim, Boguk (Daegu Science High School)
Mun, Changil (Daegu Science High School)
Lee, Dohyun (Daegu Science High School)
Kwak, Junho (Kyungpook National University)
Park, Daejin (Kyungpook National University)
Jeong, Yoosoo (Kyungpook National University)
Publication Information
Abstract
In this paper, we propose an efficient hyperplane generation technique to classify human activity from combination of events and sequence information obtained from multiple-event sensors. By generating hyperplane efficiently, our machine learning algorithm classify with less memory and run time than the LSVM (Linear Support Vector Machine) for embedded system. Because the fact that light weight and high speed algorithm is one of the most critical issue in the IoT, the study can be applied to smart home to predict human activity and provide related services. Our approach is based on reducing numbers of hyperplanes and utilizing robust string comparing algorithm. The proposed method results in reduction of memory consumption compared to the conventional ML (Machine Learning) algorithms; 252 times to LSVM and 34,033 times to LSTM (Long Short-Term Memory), although accuracy is decreased slightly. Thus our method showed outstanding performance on accuracy per hyperplane; 240 times to LSVM and 30,520 times to LSTM. The binarized image is then divided into groups, where each groups are converted to binary number, in order to reduce the number of comparison done in runtime process. The binary numbers are then converted to string. The test data is evaluated by converting to string and measuring similarity between hyperplanes using Levenshtein algorithm, which is a robust dynamic string comparing algorithm. This technique reduces runtime and enables the proposed algorithm to become 27% faster than LSVM, and 90% faster than LSTM.
Keywords
Smart home; IoT; Embedded machine learning; Light weight; High speed;
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Times Cited By KSCI : 2  (Citation Analysis)
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