Training neural audio classifiers with few data
Pons, Jordi, Serrà, Joan, Serra, Xavier
–arXiv.org Artificial Intelligence
These studies are mostly based on publiclyavailable datasets, where each class typically contains more than 100 audio examples [5, 6, 7, 8, 9]. Contrastingly, only few works study the problem of training neural audio classifiers with few audio examples (for instance, less than 10 per class) [10, 11, 12, 13]. In this work, we study how a number of neural network architectures perform in such situation. Two primary reasons motivate our work: (i) given that humans are able to learn novel concepts from few examples, we aim to quantify up to what extent such behavior is possible in current neural machine listening systems; and (ii) provided that data curation processes are tedious and expensive, it is unreasonable to assume that sizable amounts of annotated audio are always available for training neural network classifiers. The challenge of training neural networks with few audio data has been previously addressed.
arXiv.org Artificial Intelligence
Nov-3-2018