CrossZoom: Simultaneously Motion Deblurring and Event Super-Resolving
- URL: http://arxiv.org/abs/2309.16949v1
- Date: Fri, 29 Sep 2023 03:27:53 GMT
- Title: CrossZoom: Simultaneously Motion Deblurring and Event Super-Resolving
- Authors: Chi Zhang, Xiang Zhang, Mingyuan Lin, Cheng Li, Chu He, Wen Yang,
Gui-Song Xia, Lei Yu
- Abstract summary: CrossZoom is a novel unified neural Network (CZ-Net) to jointly recover sharp latent sequences within the exposure period of a blurry input and the corresponding High-Resolution (HR) events.
We present a multi-scale blur-event fusion architecture that leverages the scale-variant properties and effectively fuses cross-modality information to achieve cross-enhancement.
We propose a new dataset containing HR sharp-blurry images and the corresponding HR-LR event streams to facilitate future research.
- Score: 38.96663258582471
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Even though the collaboration between traditional and neuromorphic event
cameras brings prosperity to frame-event based vision applications, the
performance is still confined by the resolution gap crossing two modalities in
both spatial and temporal domains. This paper is devoted to bridging the gap by
increasing the temporal resolution for images, i.e., motion deblurring, and the
spatial resolution for events, i.e., event super-resolving, respectively. To
this end, we introduce CrossZoom, a novel unified neural Network (CZ-Net) to
jointly recover sharp latent sequences within the exposure period of a blurry
input and the corresponding High-Resolution (HR) events. Specifically, we
present a multi-scale blur-event fusion architecture that leverages the
scale-variant properties and effectively fuses cross-modality information to
achieve cross-enhancement. Attention-based adaptive enhancement and
cross-interaction prediction modules are devised to alleviate the distortions
inherent in Low-Resolution (LR) events and enhance the final results through
the prior blur-event complementary information. Furthermore, we propose a new
dataset containing HR sharp-blurry images and the corresponding HR-LR event
streams to facilitate future research. Extensive qualitative and quantitative
experiments on synthetic and real-world datasets demonstrate the effectiveness
and robustness of the proposed method. Codes and datasets are released at
https://bestrivenzc.github.io/CZ-Net/.
Related papers
- Event-Stream Super Resolution using Sigma-Delta Neural Network [0.10923877073891444]
Event cameras present unique challenges due to their low resolution and sparse, asynchronous nature of the data they collect.
Current event super-resolution algorithms are not fully optimized for the distinct data structure produced by event cameras.
Research proposes a method that integrates binary spikes with Sigma Delta Neural Networks (SDNNs)
arXiv Detail & Related papers (2024-08-13T15:25:18Z) - Super-Resolving Blurry Images with Events [10.05865188205294]
Event-based Blurry Super Resolution Network (EBSR-Net)
We propose a multi-scale center-surround event representation to capture motion and texture information inherent in events.
We also design a symmetric cross-modal attention module to fully exploit the complementarity between blurry images and events.
arXiv Detail & Related papers (2024-05-11T05:18:22Z) - MambaPupil: Bidirectional Selective Recurrent model for Event-based Eye tracking [50.26836546224782]
Event-based eye tracking has shown great promise with the high temporal resolution and low redundancy.
The diversity and abruptness of eye movement patterns, including blinking, fixating, saccades, and smooth pursuit, pose significant challenges for eye localization.
This paper proposes a bidirectional long-term sequence modeling and time-varying state selection mechanism to fully utilize contextual temporal information.
arXiv Detail & Related papers (2024-04-18T11:09:25Z) - Implicit Event-RGBD Neural SLAM [54.74363487009845]
Implicit neural SLAM has achieved remarkable progress recently.
Existing methods face significant challenges in non-ideal scenarios.
We propose EN-SLAM, the first event-RGBD implicit neural SLAM framework.
arXiv Detail & Related papers (2023-11-18T08:48:58Z) - Learning Parallax for Stereo Event-based Motion Deblurring [8.201943408103995]
Existing approaches rely on the perfect pixel-wise alignment between intensity images and events, which is not always fulfilled in the real world.
We propose a novel coarse-to-fine framework, named NETwork of Event-based motion Deblurring with STereo event and intensity cameras (St-EDNet)
We build a new dataset with STereo Event and Intensity Cameras (StEIC), containing real-world events, intensity images, and dense disparity maps.
arXiv Detail & Related papers (2023-09-18T06:51:41Z) - Point-aware Interaction and CNN-induced Refinement Network for RGB-D
Salient Object Detection [95.84616822805664]
We introduce CNNs-assisted Transformer architecture and propose a novel RGB-D SOD network with Point-aware Interaction and CNN-induced Refinement.
In order to alleviate the block effect and detail destruction problems brought by the Transformer naturally, we design a CNN-induced refinement (CNNR) unit for content refinement and supplementation.
arXiv Detail & Related papers (2023-08-17T11:57:49Z) - Generalizing Event-Based Motion Deblurring in Real-World Scenarios [62.995994797897424]
Event-based motion deblurring has shown promising results by exploiting low-latency events.
We propose a scale-aware network that allows flexible input spatial scales and enables learning from different temporal scales of motion blur.
A two-stage self-supervised learning scheme is then developed to fit real-world data distribution.
arXiv Detail & Related papers (2023-08-11T04:27:29Z) - Learning to Super-Resolve Blurry Images with Events [62.61911224564196]
Super-Resolution from a single motion Blurred image (SRB) is a severely ill-posed problem due to the joint degradation of motion blurs and low spatial resolution.
We employ events to alleviate the burden of SRB and propose an Event-enhanced SRB (E-SRB) algorithm.
We show that the proposed eSL-Net++ outperforms state-of-the-art methods by a large margin.
arXiv Detail & Related papers (2023-02-27T13:46:42Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.