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INVESTIGATING LABEL NOISE SENSITIVITY OF CONVOLUTIONAL NEURAL NETWORKS FOR FINE GRAINED AUDIO SIGNAL LABELLING

Citation Author(s):
Submitted by:
Rainer Kelz
Last updated:
23 April 2018 - 9:01pm
Document Type:
Poster
Document Year:
2018
Event:
Presenters:
Rainer Kelz
 

We measure the effect of small amounts of systematic and
random label noise caused by slightly misaligned ground truth
labels in a fine grained audio signal labeling task. The task
we choose to demonstrate these effects on is also known as
framewise polyphonic transcription or note quantized multi-
f0 estimation, and transforms a monaural audio signal into a
sequence of note indicator labels. It will be shown that even
slight misalignments have clearly apparent effects, demonstrating a great sensitivity of convolutional neural networks
to label noise. The implications are clear: when using convolutional neural networks for fine grained audio signal label-
ing tasks, great care has to be taken to ensure that the annotations have precise timing, and are free from systematic or
random error as much as possible - even small misalignments
will have a noticeable impact.

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