In this paper we address the task of robustly detecting multiple bioacoustic events with repetitive structures in outdoor monitoring recordings. For this, we propose to use the shift-autocorrelation (shift-ACF) that was previously successfully applied to F0 estimation in speech processing and has subsequently led to a robust technique for speech activity detection. As a first contribution, we illustrate the potentials of various shift-ACF-based time-frequency representations adapted to repeated signal components in the context of bioacoustic pattern detection. Secondly, we investigate a method for automatically detecting multiple repeated events and present an application to a concrete bioacoustic monitoring scenario. As a third contributio...
An automatic component detection method for overlapping transient pulses in multi-component signals ...
In this paper, a new auditory-based speech processing system based on the biologically rooted proper...
International audienceAcoustic emission signals specific to the incremental advance of fatigue crack...
We propose a novel method for detecting multiply repeated signal components within a source signal. ...
This paper proposes a novel approach for robustly detecting multiply repeating audio events in monit...
Our work in the last two years was mainly concerned with the detection of structured audio component...
In the last years we have developed several features for robustly representing repeating signal comp...
This paper focuses on recognition of repeats in con-tinuous environmental sounds. Environmental soun...
Bioacoustic sensors, sometimes known as autonomous recording units (ARUs), can record sounds of wild...
The objective of this thesis is to investigate how a deep learning model called recurrent neural net...
In this paper, a system for overlapping acoustic event detection is proposed, which models the tempo...
The recently introduced shift method is applied to detect and characterize burst-pulse vocalizations...
This work presents a novel approach to speech activity detec-tion for highly degraded radio-frequenc...
Acoustic monitoring of wildlife is emerging as a promising tool for animal conservation and research...
This paper presents a method of voice activity detection (VAD) for high noise scenarios, using a noi...
An automatic component detection method for overlapping transient pulses in multi-component signals ...
In this paper, a new auditory-based speech processing system based on the biologically rooted proper...
International audienceAcoustic emission signals specific to the incremental advance of fatigue crack...
We propose a novel method for detecting multiply repeated signal components within a source signal. ...
This paper proposes a novel approach for robustly detecting multiply repeating audio events in monit...
Our work in the last two years was mainly concerned with the detection of structured audio component...
In the last years we have developed several features for robustly representing repeating signal comp...
This paper focuses on recognition of repeats in con-tinuous environmental sounds. Environmental soun...
Bioacoustic sensors, sometimes known as autonomous recording units (ARUs), can record sounds of wild...
The objective of this thesis is to investigate how a deep learning model called recurrent neural net...
In this paper, a system for overlapping acoustic event detection is proposed, which models the tempo...
The recently introduced shift method is applied to detect and characterize burst-pulse vocalizations...
This work presents a novel approach to speech activity detec-tion for highly degraded radio-frequenc...
Acoustic monitoring of wildlife is emerging as a promising tool for animal conservation and research...
This paper presents a method of voice activity detection (VAD) for high noise scenarios, using a noi...
An automatic component detection method for overlapping transient pulses in multi-component signals ...
In this paper, a new auditory-based speech processing system based on the biologically rooted proper...
International audienceAcoustic emission signals specific to the incremental advance of fatigue crack...