Guided Depth Map Super-resolution: A Survey
- URL: http://arxiv.org/abs/2302.09598v1
- Date: Sun, 19 Feb 2023 15:43:54 GMT
- Title: Guided Depth Map Super-resolution: A Survey
- Authors: Zhiwei Zhong, Xianming Liu, Junjun Jiang, Debin Zhao, Xiangyang Ji
- Abstract summary: Guided depth map super-resolution (GDSR) aims to reconstruct a high-resolution (HR) depth map from a low-resolution (LR) observation with the help of a paired HR color image.
A myriad of novel and effective approaches have been proposed recently, especially with powerful deep learning techniques.
This survey is an effort to present a comprehensive survey of recent progress in GDSR.
- Score: 88.54731860957804
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Guided depth map super-resolution (GDSR), which aims to reconstruct a
high-resolution (HR) depth map from a low-resolution (LR) observation with the
help of a paired HR color image, is a longstanding and fundamental problem, it
has attracted considerable attention from computer vision and image processing
communities. A myriad of novel and effective approaches have been proposed
recently, especially with powerful deep learning techniques. This survey is an
effort to present a comprehensive survey of recent progress in GDSR. We start
by summarizing the problem of GDSR and explaining why it is challenging. Next,
we introduce some commonly used datasets and image quality assessment methods.
In addition, we roughly classify existing GDSR methods into three categories,
i.e., filtering-based methods, prior-based methods, and learning-based methods.
In each category, we introduce the general description of the published
algorithms and design principles, summarize the representative methods, and
discuss their highlights and limitations. Moreover, the depth related
applications are introduced. Furthermore, we conduct experiments to evaluate
the performance of some representative methods based on unified experimental
configurations, so as to offer a systematic and fair performance evaluation to
readers. Finally, we conclude this survey with possible directions and open
problems for further research. All the related materials can be found at
\url{https://github.com/zhwzhong/Guided-Depth-Map-Super-resolution-A-Survey}.
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