A Robust Multimodal Remote Sensing Image Registration Method and System
Using Steerable Filters with First- and Second-order Gradients
- URL: http://arxiv.org/abs/2202.13347v1
- Date: Sun, 27 Feb 2022 12:22:42 GMT
- Title: A Robust Multimodal Remote Sensing Image Registration Method and System
Using Steerable Filters with First- and Second-order Gradients
- Authors: Yuanxin Ye, Bai Zhu, Tengfeng Tang, Chao Yang, Qizhi Xu, Guo Zhang
- Abstract summary: Co-registration of multimodal remote sensing images is still an ongoing challenge because of nonlinear radiometric differences (NRD) and significant geometric distortions.
In this paper, a robust matching method based on the Steerable filters is proposed consisting of two critical steps.
The performance of the proposed matching method has been evaluated with many different kinds of multimodal RS images.
- Score: 7.813406811407584
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Co-registration of multimodal remote sensing images is still an ongoing
challenge because of nonlinear radiometric differences (NRD) and significant
geometric distortions (e.g., scale and rotation changes) between these images.
In this paper, a robust matching method based on the Steerable filters is
proposed consisting of two critical steps. First, to address severe NRD, a
novel structural descriptor named the Steerable Filters of first- and
second-Order Channels (SFOC) is constructed, which combines the first- and
second-order gradient information by using the steerable filters with a
multi-scale strategy to depict more discriminative structure features of
images. Then, a fast similarity measure is established called Fast Normalized
Cross-Correlation (Fast-NCCSFOC), which employs the Fast Fourier Transform
technique and the integral image to improve the matching efficiency.
Furthermore, to achieve reliable registration performance, a coarse-to-fine
multimodal registration system is designed consisting of two pivotal modules.
The local coarse registration is first conducted by involving both detection of
interest points (IPs) and local geometric correction, which effectively
utilizes the prior georeferencing information of RS images to address global
geometric distortions. In the fine registration stage, the proposed SFOC is
used to resist significant NRD, and to detect control points between multimodal
images by a template matching scheme. The performance of the proposed matching
method has been evaluated with many different kinds of multimodal RS images.
The results show its superior matching performance compared with the
state-of-the-art methods. Moreover, the designed registration system also
outperforms the popular commercial software in both registration accuracy and
computational efficiency. Our system is available at
https://github.com/yeyuanxin110.
Related papers
- Improving Misaligned Multi-modality Image Fusion with One-stage
Progressive Dense Registration [67.23451452670282]
Misalignments between multi-modality images pose challenges in image fusion.
We propose a Cross-modality Multi-scale Progressive Dense Registration scheme.
This scheme accomplishes the coarse-to-fine registration exclusively using a one-stage optimization.
arXiv Detail & Related papers (2023-08-22T03:46:24Z) - Spatially-Adaptive Feature Modulation for Efficient Image
Super-Resolution [90.16462805389943]
We develop a spatially-adaptive feature modulation (SAFM) mechanism upon a vision transformer (ViT)-like block.
Proposed method is $3times$ smaller than state-of-the-art efficient SR methods.
arXiv Detail & Related papers (2023-02-27T14:19:31Z) - Non-iterative Coarse-to-fine Registration based on Single-pass Deep
Cumulative Learning [11.795108660250843]
We propose a Non-Iterative Coarse-to-finE registration network (NICE-Net) for deformable image registration.
NICE-Net can outperform state-of-the-art iterative deep registration methods while only requiring similar runtime to non-iterative methods.
arXiv Detail & Related papers (2022-06-25T08:34:59Z) - Dual-Flow Transformation Network for Deformable Image Registration with
Region Consistency Constraint [95.30864269428808]
Current deep learning (DL)-based image registration approaches learn the spatial transformation from one image to another by leveraging a convolutional neural network.
We present a novel dual-flow transformation network with region consistency constraint which maximizes the similarity of ROIs within a pair of images.
Experiments on four public 3D MRI datasets show that the proposed method achieves the best registration performance in accuracy and generalization.
arXiv Detail & Related papers (2021-12-04T05:30:44Z) - A Learning Framework for Diffeomorphic Image Registration based on
Quasi-conformal Geometry [1.2891210250935146]
We propose the quasi-conformal registration network (QCRegNet), an unsupervised learning framework, to obtain diffeomorphic 2D image registrations.
QCRegNet consists of the estimator network and the Beltrami solver network (BSNet)
Results show that the registration accuracy is comparable to state-of-the-art methods and diffeomorphism is to a great extent guaranteed.
arXiv Detail & Related papers (2021-10-20T14:23:24Z) - Optical-Flow-Reuse-Based Bidirectional Recurrent Network for Space-Time
Video Super-Resolution [52.899234731501075]
Space-time video super-resolution (ST-VSR) simultaneously increases the spatial resolution and frame rate for a given video.
Existing methods typically suffer from difficulties in how to efficiently leverage information from a large range of neighboring frames.
We propose a coarse-to-fine bidirectional recurrent neural network instead of using ConvLSTM to leverage knowledge between adjacent frames.
arXiv Detail & Related papers (2021-10-13T15:21:30Z) - Robust Registration of Multimodal Remote Sensing Images Based on
Structural Similarity [11.512088109547294]
This paper proposes a novel feature descriptor named the Histogram of Orientated Phase Congruency (HOPC)
HOPC is based on the structural properties of images.
A similarity metric named HOPCncc is defined, which uses the normalized correlation coefficient (NCC) of the HOPC descriptors for multimodal registration.
arXiv Detail & Related papers (2021-03-31T07:51:21Z) - MuCAN: Multi-Correspondence Aggregation Network for Video
Super-Resolution [63.02785017714131]
Video super-resolution (VSR) aims to utilize multiple low-resolution frames to generate a high-resolution prediction for each frame.
Inter- and intra-frames are the key sources for exploiting temporal and spatial information.
We build an effective multi-correspondence aggregation network (MuCAN) for VSR.
arXiv Detail & Related papers (2020-07-23T05:41:27Z) - CoMIR: Contrastive Multimodal Image Representation for Registration [4.543268895439618]
We propose contrastive coding to learn shared, dense image representations, referred to as CoMIRs (Contrastive Multimodal Image Representations)
CoMIRs enable the registration of multimodal images where existing registration methods often fail due to a lack of sufficiently similar image structures.
arXiv Detail & Related papers (2020-06-11T10:51:33Z) - Learning Deformable Image Registration from Optimization: Perspective,
Modules, Bilevel Training and Beyond [62.730497582218284]
We develop a new deep learning based framework to optimize a diffeomorphic model via multi-scale propagation.
We conduct two groups of image registration experiments on 3D volume datasets including image-to-atlas registration on brain MRI data and image-to-image registration on liver CT data.
arXiv Detail & Related papers (2020-04-30T03:23:45Z) - TCM-ICP: Transformation Compatibility Measure for Registering Multiple
LIDAR Scans [4.5412347600435465]
We present an algorithm for registering multiple, overlapping LiDAR scans.
In this work, we introduce a geometric metric called Transformation Compatibility Measure (TCM) which aids in choosing the most similar point clouds for registration.
We evaluate the proposed algorithm on four different real world scenes and experimental results shows that the registration performance of the proposed method is comparable or superior to the traditionally used registration methods.
arXiv Detail & Related papers (2020-01-04T21:05:27Z)
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.