Urban Sound Classification using Neural Networks on Embedded FPGAs Articles uri icon

publication date

  • March 2024

start page

  • 3176

end page

  • 3186

volume

  • 80

International Standard Serial Number (ISSN)

  • 0920-8542

Electronic International Standard Serial Number (EISSN)

  • 1573-0484

abstract

  • Sound classification using neural networks has recently produced very accurate results. A large number of different applications use this type of sound classifiers such as controlling and monitoring the type of activity in a city or identifying different types of animals in natural environments. While traditional acoustic processing applications have been developed on high-performance computing platforms equipped with expensive multi-channel audio interfaces, the Internet of Things (IoT) paradigm requires the use of more flexible and energy-efficient systems. Although software-based platforms exist for implementing general-purpose neural networks, they are not optimized for sound classification, wasting energy and computational resources. In this work, we have used FPGAs to develop an ad hoc system where only the hardware needed for our application is synthesized, resulting in faster and more energy-efficient circuits. The results show that our developments are accelerated by a factor of 35 compared to a software-based implementation on a Raspberry Pi.

subjects

  • Telecommunications

keywords

  • fpga; sound classifcation; hardware acceleration; convolutional neural networks; deep learning