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Multi-feature multi-level visible light and high-spectrum image high-precision registering method

A hyperspectral image and visible light technology, applied in the field of image processing, can solve the problems such as the lack of, the registration accuracy cannot be guaranteed, and the quality of the hyperspectral image is poor, achieving good economic benefits, promoting wide application, good versatility and practicability Effect

Inactive Publication Date: 2012-11-28
北京市遥感信息研究所 +1
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  • Abstract
  • Description
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Problems solved by technology

At present, most of the research on the registration of visible light and hyperspectral images follows the technical route of visible light image registration; however, due to the huge difference in spatial resolution and the poor quality of hyperspectral images (noise, leakage, distortion) and other factors, At present, there is no general, automatic and practical visible light-hyperspectral image registration algorithm
In practical applications, it is often time-consuming and labor-intensive to calibrate the control point pairs manually; moreover, when the spatial resolution differs by 40 times, the error of manual calibration is very large, and the registration accuracy cannot be guaranteed

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specific Embodiment approach

[0032] According to a specific implementation of the present invention, the multi-scale decomposition in this embodiment is implemented by down-sampling. Although multi-scale decomposition can be achieved by wavelet pyramids, Gaussian pyramids and other methods, the amount of calculation is much larger than downsampling. In the fine registration stage, SIFT (Scale Invariant Feature Transform) features are more Extract on each layer of visible light image. Therefore, the multi-scale decomposition method based on sampling can greatly reduce the amount of calculation while maintaining the registration accuracy.

[0033] Step S2: Generate a significant band image of the hyperspectral image according to the hyperspectral image.

[0034] According to a specific embodiment of the present invention, the mean image of each waveband of the hyperspectral image is taken as the salient waveband image.

[0035] Step S3: Rough registration. Extract SIFT features, multi-scale corner feature and s...

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Abstract

The invention discloses a visible light image and high-spectrum image registering method which comprises the following steps: performing multi-scale decomposition on a visible light image to form a low-resolution visible light image; generating a high-spectrum image significant waveband image according to the high-spectrum image; extracting SIFT (scale invariant feature transform) features, multi-scale angular point features and surface point features from the low-resolution visible light image and high-spectrum image significant waveband image; matching the SIFT features and removing exterior points; obtaining a transformation model by use of the matched SIFT feature pair; extracting the multi-scale angular point features and surface point features based on an image block pair by taking a registered transformation model of the previous layer as an initial transformation model of the current layer on each layer of visible light image and high-spectrum image significant waveband image; selecting the transformation type and obtaining a transformation parameter according to the initial transformation and the multi-scale angular point features and surface point features in combination with an iteration re-weighted least square method; and transforming the high-spectrum image according to the transformation model to obtain the transformed high-spectrum image.

Description

Technical field [0001] The invention belongs to the technical field of image processing, and specifically relates to a registration method of remote sensing images, in particular to a registration method for visible light and hyperspectral images. The invention can be widely applied to the registration of remote sensing images acquired by aerospace and aviation sensor platforms. Background technique [0002] The hyperspectral image divides the spectrum frequency band of the object into finer segments, and the continuous spectrum curve reflects the material information of the target, which is of great significance for identifying the camouflaged target. For example, a real tank and a camouflage rubber tank in the same environment cannot be distinguished on the visible light image; although the temperature image of the visible light image can distinguish the real tank and the camouflage tank in the working state, if the real tank is also in a resting state or camouflaged rubber If...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00
Inventor 张秀玲霍春雷江碧涛潘春洪余晓刚杜鹃常民蔡琳
Owner 北京市遥感信息研究所
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