Noise Removal
In
noise removal, there is constant background noise in the data set that must be filtered
out. Imagine that you are at a party and you are talking to your friend. There is a lot of
background noise, but your brain focuses on your friend’s voice and isolates it because
that’s what you want to hear. Similarly, the model learns an efficient way to represent the
original data so that it can reconstruct it without the anomalous interference noise.
This can also be a case where an image has been altered in some form, such as by
having perturbations, loss of detail, fog, etc. The model learns an accurate representation
of the original image and outputs a reconstruction without any of the anomalous
elements in the image.
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