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Advanced Image Analysis Methods for Remote Sensing

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Title: Advanced Image Analysis Methods for Remote Sensing


1
Advanced Image Analysis Methods for Remote Sensing
  • Joji Iisaka
  • PFC,CFS, Natural Resources Canada
  • contact jiisaka_at_pfc.forestry.ca

2
Outlines
  • Introduction
  • Data Management
  • Intelligent Information fusion System for EOSD
  • Problems of current image analysis methods
  • Advanced Image Analysis Methods
  • SVM, Wavelet, PSW, and FMM
  • Conclusions

3
Introduction Remote Sensing in the 21st century
1
  • Data volume
  • More Satellites
  • Resolution enhancement
  • Spatial(30m-gt1-3m)
  • Spectral Channel(7channels -gt 200channels)
  • Time Resolution(Multiple satellites)
  • 100GB/Day , 11,100TB in the year of 2010

4
Introduction Remote Sensing in the 21st century
2
  • Wide variety of signals on terrain objects
  • Ex. Polarimetric scattering, Interferometry vs.
    reflection
  • Hyper ChannelsMore channels, sensor and
    information fusion
  • Multi spatial resolution scale independent
    analysis
  • Data normalization Temporal and Dynamic
    Analysis
  • Automated , or less interactive Analysis

5
Data management System
  • Automated data characterization and Cataloging
  • Automated Feature Extraction,
  • Feature Description
  • Automated image Indexing
  • Data Production Planning and Scheduling
  • Data and demand driven Plan and Schedule
  • Resource dynamic Resource Monitoring and
    Allocation
  • Data Structure
  • Non-Relational DBMS?
  • Data Queries
  • Natural language
  • Content -oriented

6
Intelligent Information Fusion System for EOSD
  • Planner/Scheduler
  • Expected data rates
  • System and Network load
  • Task constrains
  • Metadata Extraction
  • Low level signal/image processing
  • PNN/SVM decision trees
  • Hierarchical image decomposition and
    transformation
  • Expert system
  • High -performance system( Real time Image
    Processing system, Parallel computing,
  • high speed communication

Planner/Scheduler
Planner/Scheduler
  • Product Generation
  • Available Production Algorithms
  • Data-Driven
  • Shortage Control

Sensor Meta Data Reprocessing requests
Meta Data
Storage Meta Data
Raw Data
  • Object Database
  • Object-oriented DBMS (Not RDBMS)
  • Catalogue of Earth and Forest metadata.
  • Distribute over many Devices
  • Mass Storage
  • Distributed over many Devices(DVD,CD,)
  • Semantic Modeling
  • Storage Hierarchy

7
What is the measure of Machine Intelligence
Quotient?
  • Learning Ex.Develop Procedures and Rules for
    Information extraction
  • Automatic SummarizationEx.What objects or
    features are dominated in this scene?
  • Automated De-ambiguity
  • Understand Natural Language and Images
  • Problem Solving and Solving strategy

8
Problems of Current Methods
9
Potential Approaches
10
Hyper Channel data processing(Hyperspectral
signal and information fusion)Problems of
Conventional Methods
  • Computational loads
  • Density estimation from high dimensional data
    sets Hough Effects(Less classification accuracy
    at fixed training data)
  • Need to reduce dimensionality

11
Hyper Channel data processing(Hyperspectral
signal and information fusion) SVM(Support
Vector Machine)
  • Design classification Algorithms from supervised
    learning
  • Map the data with non-linear transform into
    higher dimensional space
  • Seeks a separating hyper-surface through
    optimizing

12
Potential Solution for Multi-resolution images
  • Essential requirements for hyper-spectral
    signature and image overlay among images of
    different spatial and spectral resolution
  • Problems of current methods
  • Ex. Fourier Transform Does not work for
    non-stationary images like remote sensing.
  • Possible solution Wavelet Analysis

13
Wavelet Analysis.
  • Wavelet vs. Fourier Analysis
  • Non-stationary vs. Stationary signal
  • Scale-translation
  • Application 1Characterization of Hyper-spectral
    signature
  • Application 2 Hierarchical Image decomposition

14
Spatial Information ExtractionPSW(Pixel
SwappingJ.Iisaka)
  • Extension of Numeric Image Processing(Conventional
    Image Processing) and Logical Image
    Processing(Mathematical Morphology)
  • Evaluation of the impact to image properties
    against reordering the pixel arraypixel pair
    exchange
  • Use induced measures among image components
    divided in a hierarchical way Ex. Local Fractal
  • geometrical Features point,line and area
    handling, corner and vertices
  • Fuzzification of spatial attribute
    Point-likeliness
  • Easy to implement and robust

15
Examples of PSW
  • Road extraction from forest area using TM data

16
Geo-biological Information ExtractionEx NDVI
  • NDVItan(theta)
  • Sensitive to atmospheric condition ( Pass
    Radiance and attenuation, etc)
  • Sensitive to Sun angle ( Not suitable for
    temporal analysis)
  • FMM Less Sensitive to these variation

Ch4
X
Ch3Ch4
Ch4-Ch3
Ch3
17
Final Result
18
Summary and Conclusion
  • New era of image computing for remote sensing
  • Hyper channels
  • Multi-scale
  • Information fusion
  • Intelligent and learning
  • Keys for Success of EOSD
  • Development of Intelligent Information Fusion
    system
  • RD for
  • Data management
  • Information Extraction
  • Automated Analysis
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