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Discriminator Output
https://discriminator.nl/index-en.html#:~:text=A%20discriminator%20is%20the%20%27heart%27%20of%20an%20FM,seriously%2C%20a%20discriminator%20tap%20is%20an%20absolute%20prerequisite.
Audio Discrimination – Lesson Plans on Letter Sounds ...
https://www.jumpstart.com/common/audio-discrimination
‘Audio Discrimination’ is a set of reading activities and worksheets that focuses on beginning and ending sounds. Free and printable, these worksheets and …
'CERAFIL' (Filters/Traps/Discriminators) for …
https://www.murata.com/~/media/webrenewal/support/library/catalog/products/filter/cerafil/p50e.ashx
Discriminators for FM CD Discriminators Product ID Radial taping is applied to lead type and embossed taping to chip type. With non-standard products, an alphanumerics indicating "Individual Specification" is added between "uIC" and "iPackaging." eStructure/Size Bulk Radial Taping H 0=18mm Embossed Taping ø=180mm Embossed Taping ø=330mm uIC 001 Code IC
Multiple Random Window Discriminator Explained | Papers ...
https://paperswithcode.com/method/multiple-random-window-discriminator
Multiple Random Window Discriminator is a discriminator used for the GAN-TTS text-to-speech architecture. These discriminators operate on randomly sub-sampled fragments of the real or generated samples. The ensemble allows for the evaluation of audio in different complementary ways, and is obtained by taking a Cartesian product of two parameter spaces: (i) the size of the …
[2012.05908] Ensemble of Discriminators for Domain ...
https://arxiv.org/abs/2012.05908
This paper introduces an ensemble of discriminators that improves the accuracy of a domain adaptation technique for the localization of multiple sound sources. Recently, deep neural networks have led to promising results for this task, yet they require a large amount of labeled data for training. Recording and labeling such datasets is very costly, especially …
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