Abstract:
In video super-resolution, it is common to use a frame-wise alignment to support the propagation of information over time. The role of alignment is well-studied for low-l...Show MoreMetadata
Abstract:
In video super-resolution, it is common to use a frame-wise alignment to support the propagation of information over time. The role of alignment is well-studied for low-level enhancement in video, but existing works overlook a critical step - resampling. We show through extensive experiments that for alignment to be effective, the resam-pIing should preserve the reference frequency spectrum while minimizing spatial distortions. However, most ex-isting works simply use a default choice of bilinear inter-polation for resampling even though bilinear interpolation has a smoothing effect and hinders super-resolution. From these observations, we propose an implicit resampling-based alignment. The sampling positions are encoded by a sinusoidal positional encoding, while the value is es-timated with a coordinate network and a window-based cross-attention. We show that bilinear interpolation inher-ently attenuates high-frequency information while an MLP-based coordinate network can approximate more frequen-cies. Experiments on synthetic and real-world datasets show that alignment with our proposed implicit resampling enhances the performance of state-of-the-art frameworks with minimal impact on both compute and parameters.
Date of Conference: 16-22 June 2024
Date Added to IEEE Xplore: 16 September 2024
ISBN Information: