quality assessment of roads in colorado based on satellite imagery

13
Quality Assessment of Roads in Colorado Based on Satellite Imagery April 7, 2014

Upload: malaya

Post on 24-Feb-2016

52 views

Category:

Documents


0 download

DESCRIPTION

Quality Assessment of Roads in Colorado Based on Satellite Imagery. April 7, 2014. Algorithm Overview. Satellite Imagery. Road Identification. Image Analysis. Road Condition Assessment. Pan-Sharpening. What we have High resolution panchromatic imagery (B/W) - PowerPoint PPT Presentation

TRANSCRIPT

Page 1: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Quality Assessment of Roads in Colorado Based on Satellite Imagery

April 7, 2014

Page 2: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Algorithm Overview

Satellite Imagery

Road Identification

Image Analysis

Road Condition

Assessment

Overview Identification Analysis Testing Conclusion

Page 3: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Pan-Sharpening

What we have • High resolution panchromatic imagery (B/W)• Low resolution multispectral imagery (Color)

We create high resolution color images (Pan-sharpening)

Helps in retaining 8 bands of information at high resolution • Will help automatically identify asphalt better

Overview Identification Analysis Testing Conclusion

Page 4: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Next we perform machine learning based classification• To increase infallibility of automatic extraction of asphalt pixels

Road Identification

Training Data

Satellite Imagery

Classifier Asphalt Pixels

Overview Identification Analysis Testing Conclusion

Page 5: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Highway pavement becomes lighter in panchromatic grayscale shade as it degrades• Digital number increases• Mean increases

Highway pavement becomes less uniform as it degrades• Data range increases• Variance increases• Entropy increases

These changes are detectable through texture filtering of satellite imagery

Can likely be used to classify road surface conditions such as good, fair, poor and to justify repaving needs

Image Analysis

Overview Identification Analysis Testing Conclusion

Page 6: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Asphalt Degradation

Spectral Characteristics of Aging Asphalt (Herold, 2007)

Overview Identification Analysis Testing Conclusion

Page 7: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Digital Number

21B 115A 24A

Highways in Colorado Springs

Overview Identification Analysis Testing Conclusion

Page 8: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Digital Number

Good Fair PoorMean 214.3 307.7 377.7STD 5.2 10.3 29.5

Overview Identification Analysis Testing Conclusion

Page 9: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Variance

21B 115A 24A

Highways in Colorado Springs

Overview Identification Analysis Testing Conclusion

Page 10: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Good Fair PoorMean 18.7 31.5 174.0STD 10.7 27.6 145.7

VarianceOverview Identification Analysis Testing Conclusion

Page 11: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Remote Sensing Road Quality AssessmentOverview Identification Analysis Testing Conclusion

Page 12: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Result Comparison and Verification

CDOT and PPACG perform in situ road surveillance at specific regions of interest

University of Colorado implements its remote sensing based road condition assessment scheme on same regions

Compare the results and quantify the degree of agreement

Overview Identification Analysis Testing Conclusion

Page 13: Quality Assessment of Roads in Colorado Based on Satellite Imagery

Conclusion

A technically detailed scheme is in place

Project moving ahead on schedule

May supplement or replace current techniques

Investment towards faster and easier surveillance

Overview Identification Analysis Testing Conclusion