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1
Introduction
2
Neural Networks for Inverse Problems
3
Deep Image Prior
4
Geometric Picture
5
Super Resolution
6
Questions
7
Deep Decoder
8
Deep Decoder Architecture
9
Deep Decoder Parameters
10
Deep Decoder Representation
11
Denoise
12
Deep Geometric Prior
13
UnderParameterize Deep Decoder
14
OverParameterize Deep Decoder
15
Smoothness Locality
16
Image Adaptive Gann
Description:
Explore unlearned neural networks as image priors for inverse problems in imaging through this 50-minute online lecture from Northeastern University's CS 7180 Spring 2020 class. Delve into Deep Image Prior, Deep Decoder, and Deep Geometric Prior concepts, examining their applications in super-resolution and denoising. Analyze the architectural differences, parameter considerations, and representation capabilities of these approaches. Investigate the geometric picture, smoothness locality, and over/under-parameterization effects. Gain insights from related papers on Image Adaptive GAN and Latent Convolutional Models. Access accompanying lecture notes for a comprehensive understanding of these cutting-edge techniques in artificial intelligence and computer vision.

Unlearned Neural Networks as Image Priors for Inverse Problems

Paul Hand
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