Rain Removal from Light Field Images with 4D Convolution and Multi-scale
Gaussian Process
- URL: http://arxiv.org/abs/2208.07735v1
- Date: Tue, 16 Aug 2022 13:09:53 GMT
- Title: Rain Removal from Light Field Images with 4D Convolution and Multi-scale
Gaussian Process
- Authors: Tao Yan, Mingyue Li, Bin Li, Yang Yang, Rynson W.H. Lau
- Abstract summary: With just a single input image, it is extremely difficult to accurately detect rain streaks, remove rain streaks, and restore rain-free images.
Compared with a single 2D image, a light field image (LFI) embeds abundant 3D structure and texture information of the target scene.
We propose a novel network, 4D-MGP-SRRNet, for rain streak removal from an LFI.
- Score: 38.2995970847287
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Existing deraining methods mainly focus on a single input image. With just a
single input image, it is extremely difficult to accurately detect rain
streaks, remove rain streaks, and restore rain-free images. Compared with a
single 2D image, a light field image (LFI) embeds abundant 3D structure and
texture information of the target scene by recording the direction and position
of each incident ray via a plenoptic camera, which has emerged as a popular
device in the computer vision and graphics research communities. In this paper,
we propose a novel network, 4D-MGP-SRRNet, for rain streak removal from an LFI.
Our method takes as input all sub-views of a rainy LFI. In order to make full
use of the LFI, we adopt 4D convolutional layers to build the proposed rain
steak removal network to simultaneously process all sub-views of the LFI. In
the proposed network, the rain detection model, MGPDNet, with a novel
Multi-scale Self-guided Gaussian Process (MSGP) module is proposed to detect
rain streaks from all sub-views of the input LFI. Semi-supervised learning is
introduced to accurately detect rain streaks by training on both virtual-world
rainy LFIs and real-world rainy LFIs at multiple scales via calculating pseudo
ground truth for real-world rain streaks. All sub-views subtracting the
predicted rain streaks are then fed into a 4D residual model to estimate depth
maps. Finally, all sub-views concatenated with the corresponding rain streaks
and fog maps converted from the estimated depth maps are fed into a rainy LFI
restoring model that is based on the adversarial recurrent neural network to
progressively eliminate rain streaks and recover the rain-free LFI. Extensive
quantitative and qualitative evaluations conducted on both synthetic LFIs and
real-world LFIs demonstrate the effectiveness of our proposed method.
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