This paper is an investigation into aspects of an audio classification pipeline that will be appropriate for the monitoring of bird species on edges devices. These aspects include transfer learning, data augmentation and model optimization. The hope is that the resulting models will be good candidates to deploy on edge devices to monitor bird populations. Two classification approaches will be taken into consideration, one which explores the effectiveness of a traditional Deep Neural Network(DNN) and another that makes use of Convolutional layers.This study aims to contribute empirical evidence of the merits and demerits of each approach.
翻译:本文件调查了适合监测边缘装置鸟类物种的音频分类管道的各个方面,包括转让学习、数据增强和模型优化,希望由此形成的模型将成为在边缘装置上部署监测鸟类种群的良好选择,将考虑两种分类方法,一种是探索传统的深神经网络(DNN)的有效性,另一种是利用革命层。