Dear subscribers of the colloquium newsletter,
we are happy to inform you about the next date of our Communication
Technology Colloquium.
*Wednesday, January 18, 2022*
*Speaker*: Konstantin Wehmeyer
*Time:* 2:00 p.m.
*Location*: hybrid - Lecture room 4G and
https://rwth.zoom.us/j/97904157921?pwd=SWpsbDl0MWhrWjY1ZkZaeFRoYmErZz09
Meeting-ID: 979 0415 7921
Passwort: 481650
*Bachelor-Lecture: ***Deep Learning-Based Speech Synthesis as
Post-Processing of a Noise Reduction
/Audio and speech signals are often disturbed by noise signals in
frequency- and/or time-limited parts. To attenuate or remove these
distortions, several methods, including deep learning- based approaches,
are known. Often, however, only the magnitude spectrum is processed and
the phase spectrum is taken over unchanged due to its comparatively
lower relevance. Consequently, the noisy phase is reused when
synthesizing the waveform from the processed magnitude spectrum.
Therefore, distortions in the magnitude spectrum can be reduced, but not
in the phase spectrum which inevitably leads to a deterioration in
speech quality and intelligibility./
/This thesis presents methods that allow a reconstruction of the phase
spectrum of speech signals based on noise-reduced magnitude spectra. At
the Institute of Communication Systems at RWTH Aachen University a phase
reconstruction algorithm was developed and this algorithm has already
been evaluated in a previous study for the case of smoothed magnitude
spectra. It was shown that the deep neural network (DNN) used can
benefit from targeted training on the smoothed magnitude spectra even
without further modification of the network structures. However, even
slight smearing of the magnitude spectra already leads to a significant
loss in performance compared to the use of perfect magnitude spectra. In
this work, therefore, the DNNs used are optimized for the case of
noise-reduced magnitude spectra. //
/
/Several deep learning-based models are introduced and compared with
each other and with the models already developed. Their properties and
aspects such as causality are addressed. Moreover, a new loss function
and assessment measure specifically designed to estimate and assess the
phase spectrum of speech signals is developed and tested. In order to be
able to evaluate the results as independently as possible of a specific
type of noise reduction, ideal masks are developed, used, and discussed.
/
All interested parties are cordially invited, registration is not required.
General information on the colloquium, as well as a current list of
dates of the Communication Technology Colloquium can be found at:
https://www.iks.rwth-aachen.de/aktuelles/kolloquium
--
Simone Sedgwick
Institute of Communication Systems(IKS)
Prof. Dr.-Ing. Peter Jax
RWTH Aachen University
Muffeter Weg 3a, 52074 Aachen, Germany
+49 241 80 26956(phone)
+49 241 80 22254(fax)
sedgwick(a)iks.rwth-aachen.de
https://www.iks.rwth-aachen.de/