Learning Sound Events From Webly Labeled Data

11/25/2018
by   Anurag Kumar, et al.
0

In the last couple of years, weakly labeled learning for sound events has turned out to be an exciting approach for audio event detection. In this work, we introduce webly labeled learning for sound events in which we aim to remove human supervision altogether from the learning process. We first develop a method of obtaining labeled audio data from the web (albeit noisy), in which no manual labeling is involved. We then describe deep learning methods to efficiently learn from these webly labeled audio recordings. In our proposed system, WeblyNet, two deep neural networks co-teach each other to robustly learn from webly labeled data, leading to around 17 the baseline method. The method also involves transfer learning to obtain efficient representations.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset