Sea surface oil spilling segmentation method based on polarized SAR (synthetic aperture radar) data fusion

A sea oil spill and data technology, applied to instruments, character and pattern recognition, computer components, etc., can solve the problem of SAR image not being universal

Inactive Publication Date: 2012-07-25
TSINGHUA UNIV +1
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0005] The object of the present invention is to provide a sea surface oil spill image segmentation method based on active contour model-based polarimetric SAR data fusion, to solve the problem that the regional statistical model b

Method used

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  • Sea surface oil spilling segmentation method based on polarized SAR (synthetic aperture radar) data fusion
  • Sea surface oil spilling segmentation method based on polarized SAR (synthetic aperture radar) data fusion
  • Sea surface oil spilling segmentation method based on polarized SAR (synthetic aperture radar) data fusion

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Embodiment 1

[0048] figure 1 It is a flow chart of the sea surface oil spill segmentation method based on polarimetric SAR data fusion. figure 1 Among them, the sea surface oil spill segmentation method based on polarization SAR data fusion provided by the present invention includes:

[0049] Step 1: Select the sea oil spill image monitoring data from different synthetic aperture radar data sources.

[0050] Step 2: Determine the scattering coherence matrix of the image.

[0051] Synthetic Aperture Radar (SAR) emits an electromagnetic wave, and the measured value of the target observation is included in the radar backscattered wave. Due to the influence of coherent speckle noise (Speckle), the single-view SAR intensity image obeys a negative exponential distribution. The multi-look SAR intensity image σ obeys the Gamma distribution, denoted as G(·) is a Gamma function, and

[0052] P ( σ ) = ...

Embodiment 2

[0105] The implementation process of the present invention is described below with an actual sea surface oil spill image simulation data.

[0106] Step 201: figure 2 The total power map of the simulated oil film data is given, the size of the image is 571×421, and the backscatter coefficients of the sea surface and oil film are respectively

[0107] [|S HH | 2 2|S HV | 2 |S VV | 2 ] oil =[0.0031 5.3598×10 -4 0.0047]

[0108] (1)

[0109] [|S HH | 2 2|S HV | 2 |S VV | 2 ] sea =[0.0048 5.7513×10 -4 0.0093]

[0110] The shape of the oil film in this simulation image is selected from the shape of the oil spill obtained by the real ASAR sensor. For the specific shape of the oil spill, see image 3 shown. In this implementation case, the applied data sources are three sets of single-polarization SAR intensity data, |S HH | 2 ,|S HV | 2 and|S VV | 2 ; Intensity fusion data of two sets of dual-pol...

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Abstract

The invention discloses a sea surface oil spilling segmentation method based on polarized SAR (synthetic aperture radar) data fusion and belongs to the technical field of the application of an SAR to marine remote sensing. The sea surface oil spilling cutting method based on polarized SAR data fusion comprises the following steps: establishing an active contour energy functional based on a segmentation region maximum posterior probability standard, representing the distribution of the segmentation region into a Gibbs prior probability model, embedding an active contour model into a high-dimensional level set function, and obtaining a development equation by using an Euler Lagrange formula, wherein the model comprises a CFAR edge detection weighted boundary length item and a CFAR edge detection weighted fusion data statistics distance item. In addition, the invention provides a method for determining an evolution parameter. The segmentation result is obtained according to the level set function of the oil film attenuation characteristic initialization through evolution of the equation. Various SAR data and polarized SAR data can be fused effectively, and the automatic segmentation of the dark region of the sea surface can be realized.

Description

technical field [0001] The invention belongs to the technical field of synthetic aperture radar (SAR) marine remote sensing application, and in particular relates to a sea surface oil spill segmentation method based on polarization SAR data fusion. Background technique [0002] As people's activities at sea become more and more frequent, oil slicks on the sea surface have become an important environmental pollution issue that people are increasingly concerned about. At present, marine oil spill pollution is mainly caused by two factors. One is the pollution caused by major accidents, such as: oil tanker accidents and oil spill accidents on oil and gas field platforms; the other is caused by illegal discharge of oil tankers during transportation. Satellite systems are well-suited for ocean monitoring because they provide continuous ocean surface monitoring data and allow for large-scale mapping. There are many remote sensing methods for monitoring sea conditions: optical, in...

Claims

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Application Information

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IPC IPC(8): G06K9/46
Inventor 殷君君杨健张庆君李延齐亚琳
Owner TSINGHUA UNIV
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