335 research outputs found
Deep Laplacian Pyramid Networks for Fast and Accurate Super-Resolution
Convolutional neural networks have recently demonstrated high-quality
reconstruction for single-image super-resolution. In this paper, we propose the
Laplacian Pyramid Super-Resolution Network (LapSRN) to progressively
reconstruct the sub-band residuals of high-resolution images. At each pyramid
level, our model takes coarse-resolution feature maps as input, predicts the
high-frequency residuals, and uses transposed convolutions for upsampling to
the finer level. Our method does not require the bicubic interpolation as the
pre-processing step and thus dramatically reduces the computational complexity.
We train the proposed LapSRN with deep supervision using a robust Charbonnier
loss function and achieve high-quality reconstruction. Furthermore, our network
generates multi-scale predictions in one feed-forward pass through the
progressive reconstruction, thereby facilitates resource-aware applications.
Extensive quantitative and qualitative evaluations on benchmark datasets show
that the proposed algorithm performs favorably against the state-of-the-art
methods in terms of speed and accuracy.Comment: This work is accepted in CVPR 2017. The code and datasets are
available on http://vllab.ucmerced.edu/wlai24/LapSRN
Holistic Dynamic Frequency Transformer for Image Fusion and Exposure Correction
The correction of exposure-related issues is a pivotal component in enhancing
the quality of images, offering substantial implications for various computer
vision tasks. Historically, most methodologies have predominantly utilized
spatial domain recovery, offering limited consideration to the potentialities
of the frequency domain. Additionally, there has been a lack of a unified
perspective towards low-light enhancement, exposure correction, and
multi-exposure fusion, complicating and impeding the optimization of image
processing. In response to these challenges, this paper proposes a novel
methodology that leverages the frequency domain to improve and unify the
handling of exposure correction tasks. Our method introduces Holistic Frequency
Attention and Dynamic Frequency Feed-Forward Network, which replace
conventional correlation computation in the spatial-domain. They form a
foundational building block that facilitates a U-shaped Holistic Dynamic
Frequency Transformer as a filter to extract global information and dynamically
select important frequency bands for image restoration. Complementing this, we
employ a Laplacian pyramid to decompose images into distinct frequency bands,
followed by multiple restorers, each tuned to recover specific frequency-band
information. The pyramid fusion allows a more detailed and nuanced image
restoration process. Ultimately, our structure unifies the three tasks of
low-light enhancement, exposure correction, and multi-exposure fusion, enabling
comprehensive treatment of all classical exposure errors. Benchmarking on
mainstream datasets for these tasks, our proposed method achieves
state-of-the-art results, paving the way for more sophisticated and unified
solutions in exposure correction
- …