Title :
Daily activity recognition based on DNN using environmental sound and acceleration signals
Author :
Tomoki Hayashi;Masafumi Nishida;Norihide Kitaoka;Kazuya Takeda
Author_Institution :
Nagoya Univ., Japan
Abstract :
We propose a new method of recognizing daily human activities based on a Deep Neural Network (DNN), using multimodal signals such as environmental sound and subject acceleration. We conduct recognition experiments to compare the proposed method to other methods such as a Support Vector Machine (SVM), using real-world data recorded continuously over 72 hours. Our proposed method achieved a frame accuracy rate of 85.5% and a sample accuracy rate of 91.7% when identifying nine different types of daily activities. Furthermore, the proposed method outperformed the SVM-based method when an additional "Other" activity category was included. Therefore, we demonstrate that DNNs are a robust method of daily activity recognition.
Keywords :
"Acceleration","Feature extraction","Support vector machines","Europe","Signal processing","Robustness","Sociology"
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2015 23rd European
Electronic_ISBN :
2076-1465
DOI :
10.1109/EUSIPCO.2015.7362796