We describe ongoing research in developing audio classification systems that use a spiking silicon cochlea as the front end. Event-driven features extracted from the spikes are fed to deep networks for the intended task. We describe a classification task on naturalistic audio sounds using a low-power silicon cochlea that outputs asynchronous events through a send-on-delta encoding of its sharply-tuned cochlea channels. Because of the event-driven nature of the processing, silences in these naturalistic sounds lead to corresponding absence of cochlea spikes and savings in computes. Results show 48% savings in computes with a small loss in accuracy using cochlea events
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
This work presents a lip reading deep neural network that fuses the asynchronous spiking outputs of ...
Deep neural speech and audio processing systems have a large number of trainable parameters, a relat...
We describe ongoing research in developing audio classification systems that use a spiking silicon c...
Event-driven neuromorphic spiking sensors such as the silicon retina and the silicon cochlea encode ...
Neuromorphic technology is slowly maturing with a variety of useable event-driven spiking sensors an...
This work presents an event-driven acoustic sensor processing pipeline to power a low-resource voice...
Speech recognition has become an important task to improve the human-machine interface. Taking into...
Event-driven neuromorphic spiking sensors such as the silicon retina and the silicon cochlea encode ...
In this paper, we explore the capabilities of a sound classification system that combines both a no...
The use of spiking neuromorphic sensors with state-of-art deep networks is currently an active area ...
This paper explores the use of three different two-dimensional time-frequency features for audio eve...
In this paper, we explore the capabilities of a sound classification system that combines a Neuromo...
The automatic recognition of sound events by computers is an important aspect of emerging applicatio...
We present our recent progress in ultra-low-power intelligent acoustic sensing that harnesses the hi...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
This work presents a lip reading deep neural network that fuses the asynchronous spiking outputs of ...
Deep neural speech and audio processing systems have a large number of trainable parameters, a relat...
We describe ongoing research in developing audio classification systems that use a spiking silicon c...
Event-driven neuromorphic spiking sensors such as the silicon retina and the silicon cochlea encode ...
Neuromorphic technology is slowly maturing with a variety of useable event-driven spiking sensors an...
This work presents an event-driven acoustic sensor processing pipeline to power a low-resource voice...
Speech recognition has become an important task to improve the human-machine interface. Taking into...
Event-driven neuromorphic spiking sensors such as the silicon retina and the silicon cochlea encode ...
In this paper, we explore the capabilities of a sound classification system that combines both a no...
The use of spiking neuromorphic sensors with state-of-art deep networks is currently an active area ...
This paper explores the use of three different two-dimensional time-frequency features for audio eve...
In this paper, we explore the capabilities of a sound classification system that combines a Neuromo...
The automatic recognition of sound events by computers is an important aspect of emerging applicatio...
We present our recent progress in ultra-low-power intelligent acoustic sensing that harnesses the hi...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
This work presents a lip reading deep neural network that fuses the asynchronous spiking outputs of ...
Deep neural speech and audio processing systems have a large number of trainable parameters, a relat...