Local Texture Estimator for Implicit Representation Function

CVPR 2022  ·  Jaewon Lee, Kyong Hwan Jin ·

Recent works with an implicit neural function shed light on representing images in arbitrary resolution. However, a standalone multi-layer perceptron shows limited performance in learning high-frequency components. In this paper, we propose a Local Texture Estimator (LTE), a dominant-frequency estimator for natural images, enabling an implicit function to capture fine details while reconstructing images in a continuous manner. When jointly trained with a deep super-resolution (SR) architecture, LTE is capable of characterizing image textures in 2D Fourier space. We show that an LTE-based neural function achieves favorable performance against existing deep SR methods within an arbitrary-scale factor. Furthermore, we demonstrate that our implementation takes the shortest running time compared to previous works.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Super-Resolution BSD100 - 2x upscaling LTE PSNR 32.44 # 9
Image Super-Resolution BSD100 - 3x upscaling LTE PSNR 29.39 # 7
Image Super-Resolution BSD100 - 4x upscaling LTE PSNR 27.86 # 7
Image Super-Resolution Set14 - 2x upscaling LTE PSNR 34.25 # 7
Image Super-Resolution Set14 - 3x upscaling LTE PSNR 30.8 # 6
Image Super-Resolution Set14 - 4x upscaling LTE PSNR 29.06 # 12
Image Super-Resolution Set5 - 2x upscaling LTE PSNR 38.33 # 7
Image Super-Resolution Set5 - 3x upscaling LTE PSNR 34.89 # 6
Image Super-Resolution Urban100 - 2x upscaling LTE PSNR 33.5 # 7
Image Super-Resolution Urban100 - 3x upscaling LTE PSNR 29.41 # 6
Image Super-Resolution Urban100 - 4x upscaling LTE PSNR 27.24 # 8

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