-
Notifications
You must be signed in to change notification settings - Fork 89
Post Hoc Denoising
Detection in DeepSqueak v3 generally produces fewer false positives than v2, so a default post-hoc denoising network has not been included. A new post-hoc denoising network may be trained for recordings with particularly bad noise issues.
False positives may be automatically identified and rejected using a post-hoc neural network.
To use the post hoc denoiser:
-
Select "Tools > Automatic Review > Post Hoc Denoising"
-
In the list box, select the detection files to denoise. All noise events found will be classified as "Noise" and rejected.
To train a post hoc denoiser:
-
Select "Tools > Network Training > Train Post Hoc Denoiser"
-
In the list box, select the detection files to to use for training
-
Calls labeled as "Noise" are used as negative training sample
- Tip: Use the "add custom labels" tool to hand label noise, more variety is better
- Tip: Make sure all types of "true" calls are well represented in the training set
-
Accepted calls not labeled as "Noise" are used as positive training samples.
-
- When training is finished, a save dialog box will appear to save the denoising network
Copyright © 2018 by Russell Marx & Kevin Coffey. All Rights Reserved. https://doi.org/10.1038/s41386-018-0303-6