Simulated Annealing based Parameter Optimization of Time-frequency
ε-filter Utilizing Correlation Coefficient
Tomomi Matsumoto
1
, Mitsuharu Matsumoto
2
and Shuji Hashimoto
1
1
Department of Applied Physics, Waseda University, 55N-4F-10A, 3-4-1 Okubo, Shinjuku-ku, Tokyo, Japan
2
The Education and Research Center for Frontier Science, University of Electro-communications, 1-5-1, Chofugaoka,
Chofu-shi, Tokyo, Japan
Keywords:
Simulated Annealing, Parameter Optimization, Noise Reduction, ε-filter, Nonlinear Filter, Time-frequency
ε-filter.
Abstract:
Time-Frequency ε-filter (TF ε-filter) can reduce different types of noise from a single-channel noisy signal
while preserving the signal that varies drastically such as a speech signal. It can reduce not only small station-
ary noise but also large nonstationary noise. However, it has some parameters whose values are set empirically.
So far, there are few studies to optimize the parameter of TF ε-filter automatically. In this paper, we employ
the correlation coefficient of the filter output and the difference between the filter input and output as the
evaluation function of the parameter optimization. We also propose an algorithm to set the optimal parameter
of TF ε-filter automatically. The experimental results show that we can obtain the adequate parameter in TF
ε-filter automatically by using the proposed method.
1 INTRODUCTION
Noise reduction plays an important role in speech
recognition and individual identification. When
we consider the instruments like hearing-aids and
phones, noise reduction for a single-channel signal
is required. The spectral subtraction (SS) is a well-
known approach for reducing the noise signal of the
monaural-sound (Boll, 1979; Lim, 1978). It can re-
duce the noise effectively with the simple procedure.
However, it can handle only the stationary noise.
It also needs to estimate the noise spectrum in ad-
vance. Although noise reduction utilizing Kalman
filter has also been reported (Kalman, 1960; Fuji-
moto and Ariki, 2002), the calculation cost is large.
Some authors have reported a model based approach
for noise reduction (Daniel et al., 2006). In this ap-
proach, we can extract the objective sound by con-
structing the sound model in advance. However, it is
not applicable to the signals with the unknown noise.
There are some approaches utilizing comb filter (Lim
et al., 1978). In this approach, we firstly estimate the
pitch of the speech signal, and reduce the noise signal
utilizing comb filter. However, the estimation error
results in the degradation of the speech quality espe-
cially in case of consonant.
Harashima et al. have reported a nonlinear filter
named ε-filter , which can reduce noise while preserv-
ing the signal (Harashima et al., 1982) . We label it
“TD ε-filter” as it handles signal shape in time do-
main. TD ε-filter is simple and has some desirable
features for noise reduction. It does not require the
model not only of the signal but also of the noise
in advance. It is easy to be designed and the calcu-
lation cost is small. It can reduce not only the sta-
tionary noise but also the nonstationary noise. How-
ever, it can reduce only the small amplitude noise
in principle. To solve the problems, the method la-
beled time-frequency ε-filter (TF ε-filter) was pro-
posed (Abe et al., 2007). TF ε-filter is an improved
ε-filter applied to the complex spectra along the time
axis in time-frequency domain. By utilizing TF ε-
filter, we can reduce not only small amplitude sta-
tionary noise but also large amplitude nonstationary
noise. However, TF ε-filter has some parameters and
we need to set them adequately based on empirical
control. Moreover, as we only have a single-channel
noisy signal, it is difficult to evaluate whether the pa-
rameter is optimal or not. We cannot know the differ-
ence between the original signal and the filter output
from the observed signal. So far, there are few studies
on the appropriateness of the parameter setting of TF
ε-filter.
Based on the above prospects, we proposed an ap-
237
Matsumoto T., Matsumoto M. and Hashimoto S..
Simulated Annealing based Parameter Optimization of Time-frequency e-filter Utilizing Correlation Coefficient.
DOI: 10.5220/0004126602370241
In Proceedings of the International Conference on Signal Processing and Multimedia Applications and Wireless Information Networks and Systems
(SIGMAP-2012), pages 237-241
ISBN: 978-989-8565-25-9
Copyright
c
2012 SCITEPRESS (Science and Technology Publications, Lda.)