Early Stopping for Deep Image Prior
Transactions on Machine Learning Research (TMLR), 2835-8856 (12/2023) Deep image prior (DIP) and its variants have showed remarkable potential for solving inverse problems in computer vision, without any extra training data. Practical DIP models are often substantially overparameterized. During the...
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Zusammenfassung: | Transactions on Machine Learning Research (TMLR), 2835-8856
(12/2023) Deep image prior (DIP) and its variants have showed remarkable potential for
solving inverse problems in computer vision, without any extra training data.
Practical DIP models are often substantially overparameterized. During the
fitting process, these models learn mostly the desired visual content first,
and then pick up the potential modeling and observational noise, i.e.,
overfitting. Thus, the practicality of DIP often depends critically on good
early stopping (ES) that captures the transition period. In this regard, the
majority of DIP works for vision tasks only demonstrates the potential of the
models -- reporting the peak performance against the ground truth, but provides
no clue about how to operationally obtain near-peak performance without access
to the groundtruth. In this paper, we set to break this practicality barrier of
DIP, and propose an efficient ES strategy, which consistently detects near-peak
performance across several vision tasks and DIP variants. Based on a simple
measure of dispersion of consecutive DIP reconstructions, our ES method not
only outpaces the existing ones -- which only work in very narrow domains, but
also remains effective when combined with a number of methods that try to
mitigate the overfitting. The code is available at
https://github.com/sun-umn/Early_Stopping_for_DIP. |
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DOI: | 10.48550/arxiv.2112.06074 |