Authors
Paul Upchurch, Jacob Gardner, Geoff Pleiss, Robert Pless, Noah Snavely, Kavita Bala, Kilian Weinberger
Publication date
2017
Conference
Proceedings of the IEEE conference on computer vision and pattern recognition
Pages
7064-7073
Description
We propose Deep Feature Interpolation (DFI), a new data-driven baseline for automatic high-resolution image transformation. As the name suggests, DFI relies only on simple linear interpolation of deep convolutional features from pre-trained convnets. We show that despite its simplicity, DFI can perform high-level semantic transformations like" make older/younger"," make bespectacled"," add smile", among others, surprisingly well--sometimes even matching or outperforming the state-of-the-art. This is particularly unexpected as DFI requires no specialized network architecture or even any deep network to be trained for these tasks. DFI therefore can be used as a new baseline to evaluate more complex algorithms and provides a practical answer to the question of which image transformation tasks are still challenging after the advent of deep learning.
Total citations
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Scholar articles
P Upchurch, J Gardner, G Pleiss, R Pless, N Snavely… - Proceedings of the IEEE conference on computer …, 2017