1 Image Pre-Processing. 2 Digital Image Processing The process of extracting information from...

Preview:

Citation preview

1

Image Pre-Processing

2

Digital Image Processing

• The process of extracting information from digital images obtained from satellites

• Information regarding each pixel is fed into an algorithm and the result of the computation stored for that pixel

• Thus for each image being processed by a particular algorithm there is an input and output image

• Order of processing is important

3

The basic processes• Pre-processing- this lecture

1. Image rectification (geometric correction)

2. Radiometric correction (includes noise removal, DN-to-radiance conversion)

3. Atmospheric correction

• Processing

Image enhancement – contrast enhancement and image filtering (may be only visual)

Image classification

Data merging/data fusion

4

1. Geometric correction• Various geometric distortions:

Random– Variations in altitude, attitude and velocity of the sensor

platform– Atmospheric refraction– Relief displacement– Variable speed of scanning mirrorSystematic– Panoramic distortion– Skew distortion due to earth rotation during sweep of IFOV)– Earth curvature – orbit variation due to ellipsoid

Output is a geometrically accurate image, registered to a ground coordinate system - georeferenced

5

Systematic distortions• Panoramic Distortion

– The ground area imaged is proportional to the tangent of the scan angle rather than to the angle itself. Because data are sampled at regular intervals, this produces along-scan distortion.

• Skew Distortion– Earth rotates as the sensor scans the terrain. This results in a

shift of the ground swath being scanned, causing along-scan distortion.

– deskewing involves offsetting each scan line successively to west

– Skewed parallellogram appearance of images

Change in scale at edge of scan (tangential distortion)

6

Correction of distortions1. Most systematic distortions corrected at

ground station2. Most random distortions are corrected

by analysing GCPs in the image to register the image to the ground co-ordinate system (geo-referencing, registering)

7

Geometric correction using ground control points

•Uses least squares regression •Sum of squared difference between image and true coordinates minimised•Find four least squared coefficients

map x coordinate as function of image c and rmap y coordinate as function of image c and rimage c coordinate as function of map x and yimage r coordinate as function of map x and y

Then: x1 = a0 + a1c1 + a2r1 where a is the coefficient

8

Resampling

• Process of resampling: which cell values to use?– nearest neighbour– bilinear interpolation

(distance weighted average of 4 nearest pixels)

9

2. Radiometric correction– Need to calibrate data radiometrically due to:-

(i) Geometric and atmospheric effects• Scene illumination (time of day, season)• Viewing geometry• Relative position of sensor and illumination

(ii) System calibration effects• systematic differences in the digital numbers eg. striping• conversion of ground radiance to DNs due to differential

sensitivity of detectors to different wavebands• different sensors convert differently to byte scale• Effects of System noise on pixel values

10

Radiometric correction: effects of seasonal change

11

A form of radiometric correction is the conversion of the digital numbers to absolute radiance values

DN-to-Radiance conversion

eg. for LANDSAT L=((Lmax-Lmin)/QCalmax-QCalmin)*(QCal-QCalmin) + Lmin

12

Noise removal

• Noise is the unwanted disturbance in an image that is due to limitations in the sensing, digitisation or data recording process

• The effects of noise range from a degradation to total masking of the true radiometric information content of the digital image

13

Noise removal

• Critical to the subsequent processing and classification of an image

• Done to produce an image that is as close to the original radiometry of the scene as possible

• Noise may either be systematic (banding of multispectral images) to dropped lines or parts of lines

14

The use of moving

windows to average out

random noise

15

Algorithm for removal of random AND systematic noise

16

Stripe noise

• Sixteen-line frequency noise in a LANDSAT TM band 2 – Sumatra coastline

17

Image after scan-line noise

removal

18

Line drop

• Dropped line removed by averaging pixels each side of the line

19

3. Atmospheric correctionThe effects of the atmosphere include• reduction in the amount of energy reaching the ground by absorption

and scattering• increasing the amount of energy reaching the sensor by scattering

the radiation (diffuse radiation)• decrease in thermal due to w. vapour absorption

Atmospheric correction done by• empirical methods• dark pixel method

20

Dark pixel method: eg. for NIR band

21

SPOT images (SPOTs 1-5)

• Spot images available is range of pre-processed levels:– 1A– 1B– 2A– 2B– Ortho

22

Upper air data for empirical correction

Pw representswater vapour

http://envf.ust.hk/dataview/profile/current/

23

Level 1A

• Raw image

• Detector normalisation for each band

• Least amount of processing

• Panoramic effect due to scale change• Cost HK$23,300 XS; HK$29,500 Pan

• Use Radiometric studies, stereoplotting

24

Level 1B

• Radiometric corrections as for 1A• Geometric corrections

• Panoramic effect• Earth rotation and curvature• Orbit altitude variation w.r.t. reference ellipsoid

Cost: HK$23,300 XS; HK$29,500 PanUse: Interpretation, thematic studies,

stereoplotting

25

Level 2A

• Corrections Rectified to given projection and rotated to North

from satellite data

• Accuracy 500m planimetric

• UsesLow accuracy cartographic

• Cost HK$27,500 XS; HK$33,000 Pan

26

Level 2B• Corrections Rectified to control from either

maps or survey. Still has relief displacement

• Accuracy Absolute to 20m RMS

• Use High accuracy cartographic studies, SPOTView products

• Cost HK$42,000 both

Level 2B with relief correction from DTM

Ortho

Recommended