Deep learning models have improved cutting-edge technologies in many research areas, but their black-box structure makes it difficult to understand their inner workings and the rationale behind their predictions. This may lead to unintended effects, such as being susceptible to adversarial attacks or the reinforcement of biases. There is still a lack of research in the audio domain, despite the increasing interest in developing deep learning models that provide explanations of their decisions. To reduce this gap, we propose a novel interpretable deep learning model for automatic sound classification, which explains its predictions based on the similarity of the input to a set of learned prototypes in a latent space. We leverage domain knowl...
The soundscape of urban parks and cities are composed of a variety of natural and man-made noises. T...
In modern times nowadays, the need for automation is becoming more prevalent as companies in the Inf...
Deep neural networks (DNNs) for sound recognition learn to categorize a barking sound as a "dog"and ...
Deep learning models have improved cutting-edge technologies in many research areas, but their black...
The rise of deep learning as an effective tool for classification tasks in the audio domain came at ...
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
Deep learning for high-level sound categorizationThis document presents a short description of...
As an important information carrier, sound carries abundant information about the environment, which...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...
Sound assumes a significant part in human existence. It is one of the fundamental tangible data whic...
The classification of environmental sounds is important for emerging applications such as automatic ...
With the rapid growth of the Internet, the amount of video and audio data is increasing sharply. Wit...
Despite many technological advances, hearing aids still amplify the background sounds together with ...
The objective of this thesis is to develop novel classification and feature learning techniques for t...
The soundscape of urban parks and cities are composed of a variety of natural and man-made noises. T...
In modern times nowadays, the need for automation is becoming more prevalent as companies in the Inf...
Deep neural networks (DNNs) for sound recognition learn to categorize a barking sound as a "dog"and ...
Deep learning models have improved cutting-edge technologies in many research areas, but their black...
The rise of deep learning as an effective tool for classification tasks in the audio domain came at ...
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
Deep learning for high-level sound categorizationThis document presents a short description of...
As an important information carrier, sound carries abundant information about the environment, which...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...
Sound assumes a significant part in human existence. It is one of the fundamental tangible data whic...
The classification of environmental sounds is important for emerging applications such as automatic ...
With the rapid growth of the Internet, the amount of video and audio data is increasing sharply. Wit...
Despite many technological advances, hearing aids still amplify the background sounds together with ...
The objective of this thesis is to develop novel classification and feature learning techniques for t...
The soundscape of urban parks and cities are composed of a variety of natural and man-made noises. T...
In modern times nowadays, the need for automation is becoming more prevalent as companies in the Inf...
Deep neural networks (DNNs) for sound recognition learn to categorize a barking sound as a "dog"and ...