11,141 research outputs found
Deep Learning for Audio Signal Processing
Given the recent surge in developments of deep learning, this article
provides a review of the state-of-the-art deep learning techniques for audio
signal processing. Speech, music, and environmental sound processing are
considered side-by-side, in order to point out similarities and differences
between the domains, highlighting general methods, problems, key references,
and potential for cross-fertilization between areas. The dominant feature
representations (in particular, log-mel spectra and raw waveform) and deep
learning models are reviewed, including convolutional neural networks, variants
of the long short-term memory architecture, as well as more audio-specific
neural network models. Subsequently, prominent deep learning application areas
are covered, i.e. audio recognition (automatic speech recognition, music
information retrieval, environmental sound detection, localization and
tracking) and synthesis and transformation (source separation, audio
enhancement, generative models for speech, sound, and music synthesis).
Finally, key issues and future questions regarding deep learning applied to
audio signal processing are identified.Comment: 15 pages, 2 pdf figure
Robust sound event detection in bioacoustic sensor networks
Bioacoustic sensors, sometimes known as autonomous recording units (ARUs),
can record sounds of wildlife over long periods of time in scalable and
minimally invasive ways. Deriving per-species abundance estimates from these
sensors requires detection, classification, and quantification of animal
vocalizations as individual acoustic events. Yet, variability in ambient noise,
both over time and across sensors, hinders the reliability of current automated
systems for sound event detection (SED), such as convolutional neural networks
(CNN) in the time-frequency domain. In this article, we develop, benchmark, and
combine several machine listening techniques to improve the generalizability of
SED models across heterogeneous acoustic environments. As a case study, we
consider the problem of detecting avian flight calls from a ten-hour recording
of nocturnal bird migration, recorded by a network of six ARUs in the presence
of heterogeneous background noise. Starting from a CNN yielding
state-of-the-art accuracy on this task, we introduce two noise adaptation
techniques, respectively integrating short-term (60 milliseconds) and long-term
(30 minutes) context. First, we apply per-channel energy normalization (PCEN)
in the time-frequency domain, which applies short-term automatic gain control
to every subband in the mel-frequency spectrogram. Secondly, we replace the
last dense layer in the network by a context-adaptive neural network (CA-NN)
layer. Combining them yields state-of-the-art results that are unmatched by
artificial data augmentation alone. We release a pre-trained version of our
best performing system under the name of BirdVoxDetect, a ready-to-use detector
of avian flight calls in field recordings.Comment: 32 pages, in English. Submitted to PLOS ONE journal in February 2019;
revised August 2019; published October 201
Open-set Speaker Identification
This study is motivated by the growing need for effective extraction of intelligence and evidence from audio recordings in the fight against crime, a need made ever more apparent with the recent expansion of criminal and terrorist organisations. The main focus is to enhance open-set speaker identification process within the speaker identification systems, which are affected by noisy audio data obtained under uncontrolled environments such as in the street, in restaurants or other places of businesses. Consequently, two investigations are initially carried out including the effects of environmental noise on the accuracy of open-set speaker recognition, which thoroughly cover relevant conditions in the considered application areas, such as variable training data length, background noise and real world noise, and the effects of short and varied duration reference data in open-set speaker recognition.
The investigations led to a novel method termed “vowel boosting” to enhance the reliability in speaker identification when operating with varied duration speech data under uncontrolled conditions. Vowels naturally contain more speaker specific information. Therefore, by emphasising this natural phenomenon in speech data, it enables better identification performance. The traditional state-of-the-art GMM-UBMs and i-vectors are used to evaluate “vowel boosting”. The proposed approach boosts the impact of the vowels on the speaker scores, which improves the recognition accuracy for the specific case of open-set identification with short and varied duration of speech material
Comparison for Improvements of Singing Voice Detection System Based on Vocal Separation
Singing voice detection is the task to identify the frames which contain the
singer vocal or not. It has been one of the main components in music
information retrieval (MIR), which can be applicable to melody extraction,
artist recognition, and music discovery in popular music. Although there are
several methods which have been proposed, a more robust and more complete
system is desired to improve the detection performance. In this paper, our
motivation is to provide an extensive comparison in different stages of singing
voice detection. Based on the analysis a novel method was proposed to build a
more efficiently singing voice detection system. In the proposed system, there
are main three parts. The first is a pre-process of singing voice separation to
extract the vocal without the music. The improvements of several singing voice
separation methods were compared to decide the best one which is integrated to
singing voice detection system. And the second is a deep neural network based
classifier to identify the given frames. Different deep models for
classification were also compared. The last one is a post-process to filter out
the anomaly frame on the prediction result of the classifier. The median filter
and Hidden Markov Model (HMM) based filter as the post process were compared.
Through the step by step module extension, the different methods were compared
and analyzed. Finally, classification performance on two public datasets
indicates that the proposed approach which based on the Long-term Recurrent
Convolutional Networks (LRCN) model is a promising alternative.Comment: 15 page
Audio Deepfake Detection: A Survey
Audio deepfake detection is an emerging active topic. A growing number of
literatures have aimed to study deepfake detection algorithms and achieved
effective performance, the problem of which is far from being solved. Although
there are some review literatures, there has been no comprehensive survey that
provides researchers with a systematic overview of these developments with a
unified evaluation. Accordingly, in this survey paper, we first highlight the
key differences across various types of deepfake audio, then outline and
analyse competitions, datasets, features, classifications, and evaluation of
state-of-the-art approaches. For each aspect, the basic techniques, advanced
developments and major challenges are discussed. In addition, we perform a
unified comparison of representative features and classifiers on ASVspoof 2021,
ADD 2023 and In-the-Wild datasets for audio deepfake detection, respectively.
The survey shows that future research should address the lack of large scale
datasets in the wild, poor generalization of existing detection methods to
unknown fake attacks, as well as interpretability of detection results
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