Abstract:
Image registration aims to eliminate the geometric deviation between multisource data with the same range, and to promote the collaborative application of data. In recent...Show MoreMetadata
Abstract:
Image registration aims to eliminate the geometric deviation between multisource data with the same range, and to promote the collaborative application of data. In recent years, spaceborne hyperspectral (HS) and multispectral (MS) data have been widely used in Earth observation. However, the difference in the number of bands, spatial resolution, and spectral resolution puts forward higher requirements on the registration algorithm. The key to HS and MS image registration is to extract more common key points, weaken and eliminate the difference of radiation and spatial texture information to build superior descriptors, and achieve high-precision matching of key points. This article introduces a new robust HS and MS registration method based on common deep feature subspaces. We first construct the common deep feature subspace extraction network to extract consistent edge features and common subspace images of the image pair. Then, the Harris algorithm is used to extract key points from consistent edge features between images, which reduces the impact of spatial resolution differences between images. Besides, the SIFT descriptor and subspace images are used to describe key points, which reduces the impact of radiation differences between images. Finally, Euclidean distance is used for the initial matching of key points, and the affine matrix is calculated after the outliers are eliminated, and image registration is performed. We perform experiments on spaceborne HS and MS datasets of different spatial resolutions and comparisons with state-of-the-art methods. Experimental results show that our method can obtain satisfactory registration results and is robust.
Published in: IEEE Transactions on Geoscience and Remote Sensing ( Volume: 61)
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- IEEE Keywords
- Index Terms
- Spatial Resolution ,
- Image Registration ,
- Hyperspectral Data ,
- Multispectral Data ,
- Large Spatial Resolution ,
- Spaceborne Hyperspectral Data ,
- Large Difference In Spatial Resolution ,
- Difference In The Number ,
- Spatial Information ,
- Differential Impact ,
- Spectral Resolution ,
- Image Pairs ,
- Spatial Differences ,
- Multispectral Images ,
- Earth Observation ,
- Consistent Feature ,
- Differences In Information ,
- Geometric Deviation ,
- Registration Method ,
- Edge Features ,
- Feature-based Methods ,
- Differences In Spatial Resolution ,
- Registration Performance ,
- Final Feature ,
- Template-based Methods ,
- Consistency Loss ,
- Differences In Radiation ,
- Residual Network ,
- Deep Learning ,
- Random Sample Consensus
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Spatial Resolution ,
- Image Registration ,
- Hyperspectral Data ,
- Multispectral Data ,
- Large Spatial Resolution ,
- Spaceborne Hyperspectral Data ,
- Large Difference In Spatial Resolution ,
- Difference In The Number ,
- Spatial Information ,
- Differential Impact ,
- Spectral Resolution ,
- Image Pairs ,
- Spatial Differences ,
- Multispectral Images ,
- Earth Observation ,
- Consistent Feature ,
- Differences In Information ,
- Geometric Deviation ,
- Registration Method ,
- Edge Features ,
- Feature-based Methods ,
- Differences In Spatial Resolution ,
- Registration Performance ,
- Final Feature ,
- Template-based Methods ,
- Consistency Loss ,
- Differences In Radiation ,
- Residual Network ,
- Deep Learning ,
- Random Sample Consensus
- Author Keywords