Classification of acoustical alarm signals with CNN using wavelet transformation
Özet
This paper presents a wavelet transformation (WT) based technique for reducing the size of Cellular Neural Network (CNN) [1] used for the acoustic alarm signals classification system proposed by Osuna et.al. [2]. The system of [2] consists of three processing units: i) Transformation of a 1-dimensional (1-D) signal into a sequence of 2-dimensional (2-D) signals, so called images obtained by a low pass filter cascade incorporating with a grid like correlation process, ii) Concentrating an image sequence into a single image by linear threshold template CNN, iii) Classification of the resulting image by discrete-valued perceptrons. In this paper, discrete WT (DWT) incorporating with grid like correlation process has been used for transforming 1-D acoustic signal into an image sequence. AN other operations needed for the classification has been performed as done in [2] for the sake of comparison. The WT based technique proposed in this paper gives the possibility of acoustic alarm signal classification by using CNNs of small size,e.g., 13x13. By using WT based technique, CNN of size 13x13 becomes sufficient.