SCENE CLASS RECOGNITION USING HIGH RESOLUTION SAR/INSAR SPECTRAL DECOMPOSITION METHODS Anca Popescu, Inge Gavat University Politehnica Bucharest (UPB)

Slides:



Advertisements
Similar presentations
V-Detector: A Negative Selection Algorithm Zhou Ji, advised by Prof. Dasgupta Computer Science Research Day The University of Memphis March 25, 2005.
Advertisements

ECE 8443 – Pattern Recognition ECE 8423 – Adaptive Signal Processing Objectives: The Linear Prediction Model The Autocorrelation Method Levinson and Durbin.
IGARSS 2011, July , Vancouver, Canada Demonstration of Target Vibration Estimation in Synthetic Aperture Radar Imagery Qi Wang 1,2, Matthew Pepin.
New modules of the software package “PHOTOMOD Radar” September 2010, Gaeta, Italy X th International Scientific and Technical Conference From Imagery to.
Intelligent Systems Lab. Recognizing Human actions from Still Images with Latent Poses Authors: Weilong Yang, Yang Wang, and Greg Mori Simon Fraser University,
COMPUTER AIDED DIAGNOSIS: FEATURE SELECTION Prof. Yasser Mostafa Kadah –
Feature Vector Selection and Use With Hidden Markov Models to Identify Frequency-Modulated Bioacoustic Signals Amidst Noise T. Scott Brandes IEEE Transactions.
7 th CNES/DLR Workshop LISTIC / TSI / GIPSA-lab / MAP-PAGE1 High Resolution SAR Interferometry: estimation of local frequencies in the context of Alpine.
METHODS OF OBJECT TRACKING IN VISION SYSTEMS Grzegorz Bieszczad Tutor: Tomasz Sosnowski ph.d. Military University of Technology Faculty of Electronics.
Speech Enhancement Based on a Combination of Spectral Subtraction and MMSE Log-STSA Estimator in Wavelet Domain LATSI laboratory, Department of Electronic,
Object Class Recognition Using Discriminative Local Features Gyuri Dorko and Cordelia Schmid.
Modeling of Mel Frequency Features for Non Stationary Noise I.AndrianakisP.R.White Signal Processing and Control Group Institute of Sound and Vibration.
Distributed and Efficient Classifiers for Wireless Audio-Sensor Networks Baljeet Malhotra Ioanis Nikolaidis Mario A. Nascimento University of Alberta Canada.
Introduction to Spectral Estimation
Identifying Computer Graphics Using HSV Model And Statistical Moments Of Characteristic Functions Xiao Cai, Yuewen Wang.
Troy P. Kling Mentors: Dr. Maxim Neumann, Dr. Razi Ahmed
Machine Learning CUNY Graduate Center Lecture 3: Linear Regression.
Competence Centre on Information Extraction and Image Understanding for Earth Observation Matteo Soccorsi (1) and Mihai Datcu (1,2) A Complex GMRF for.
Efficient design of a C-band aperture-coupled stacked microstrip array using Nexxim and Designer Alberto Di Maria German Aerospace Centre (DLR) – Microwaves.
A New Subspace Approach for Supervised Hyperspectral Image Classification Jun Li 1,2, José M. Bioucas-Dias 2 and Antonio Plaza 1 1 Hyperspectral Computing.
Element 2: Discuss basic computational intelligence methods.
Fuzzy Entropy based feature selection for classification of hyperspectral data Mahesh Pal Department of Civil Engineering National Institute of Technology.
GISMO Simulation Study Objective Key instrument and geometry parameters Surface and base DEMs Ice mass reflection and refraction modeling Algorithms used.
COMPARISON OF IMAGE ANALYSIS FOR THAI HANDWRITTEN CHARACTER RECOGNITION Olarik Surinta, chatklaw Jareanpon Department of Management Information System.
ECE 8443 – Pattern Recognition ECE 8423 – Adaptive Signal Processing Objectives: Definitions Random Signal Analysis (Review) Discrete Random Signals Random.
Competence Centre on Information Extraction and Image Understanding for Earth Observation Prof. Dr. Mihai Datcu SATELLITE IMAGE ARTIFACTS DETECTION BASED.
Handwritten Recognition with Neural Network Chatklaw Jareanpon, Olarik Surinta Mahasarakham University.
Additive Data Perturbation: the Basic Problem and Techniques.
Peng Lei Beijing University of Aeronautics and Astronautics IGARSS 2011, Vancouver, Canada July 26, 2011 Radar Micro-Doppler Analysis and Rotation Parameter.
Feature Vector Selection and Use With Hidden Markov Models to Identify Frequency-Modulated Bioacoustic Signals Amidst Noise T. Scott Brandes IEEE Transactions.
IEEE IGARSS Vancouver, July 27, 2011 On the potential of TanDEM-X for the retrieval of agricultural crop parameters by single-pass PolInSAR Juan M. Lopez-Sanchez.
Wideband Radar Simulator for Evaluation of Direction-of-Arrival Processing Sean M. Holloway Center for the Remote Sensing of Ice Sheets, University of.
Competence Centre on Information Extraction and Image Understanding for Earth Observation 1 High Resolution Complex SAR Image Analysis Using Azimuth Sub-Band.
PARALLEL FREQUENCY RADAR VIA COMPRESSIVE SENSING
INTRODUCTION TO Machine Learning 3rd Edition
Co-Registration of SAR Image Pairs for Interferometry
Z bigniew Leonowicz, Wroclaw University of Technology Z bigniew Leonowicz, Wroclaw University of Technology, Poland XXIX  IC-SPETO.
GENDER AND AGE RECOGNITION FOR VIDEO ANALYTICS SOLUTION PRESENTED BY: SUBHASH REDDY JOLAPURAM.
MSc Project Musical Instrument Identification System MIIS Xiang LI ee05m216 Supervisor: Mark Plumbley.
PCA vs ICA vs LDA. How to represent images? Why representation methods are needed?? –Curse of dimensionality – width x height x channels –Noise reduction.
1 InSAR Project Information. 2 Outline Purpose Two components – SAR investigation, InSAR study SAR investigation: presentation only InSAR study: presentation.
Objectives: Terminology Components The Design Cycle Resources: DHS Slides – Chapter 1 Glossary Java Applet URL:.../publications/courses/ece_8443/lectures/current/lecture_02.ppt.../publications/courses/ece_8443/lectures/current/lecture_02.ppt.
Autoregressive (AR) Spectral Estimation
Intelligent Database Systems Lab Advisor : Dr. Hsu Graduate : Chien-Shing Chen Author : Jessica K. Ting Michael K. Ng Hongqiang Rong Joshua Z. Huang 國立雲林科技大學.
Discriminative Training and Machine Learning Approaches Machine Learning Lab, Dept. of CSIE, NCKU Chih-Pin Liao.
Analysis of Traction System Time-Varying Signals using ESPRIT Subspace Spectrum Estimation Method Z. Leonowicz, T. Lobos
Yi Jiang MS Thesis 1 Yi Jiang Dept. Of Electrical and Computer Engineering University of Florida, Gainesville, FL 32611, USA Array Signal Processing in.
1 Electrical and Computer Engineering Binghamton University, State University of New York Electrical and Computer Engineering Binghamton University, State.
Chongwen DUAN, Weidong HU, Xiaoyong DU ATR Key Laboratory, National University of Defense Technology IGARSS 2011, Vancouver.
An unsupervised conditional random fields approach for clustering gene expression time series Chang-Tsun Li, Yinyin Yuan and Roland Wilson Bioinformatics,
IGARSS’ July, Vancouver, Canada Subsidence Monitoring Using Polarimetric Persistent Scatterers Interferometry Victor D. Navarro-Sanchez and Juan.
WLD: A Robust Local Image Descriptor Jie Chen, Shiguang Shan, Chu He, Guoying Zhao, Matti Pietikäinen, Xilin Chen, Wen Gao 报告人:蒲薇榄.
Shadow Detection in Remotely Sensed Images Based on Self-Adaptive Feature Selection Jiahang Liu, Tao Fang, and Deren Li IEEE TRANSACTIONS ON GEOSCIENCE.
Spectral subtraction algorithm and optimize Wanfeng Zou 7/3/2014.
Analyzing circadian expression data by harmonic regression based on autoregressive spectral estimation Rendong Yang and Zhen Su Division of Bioinformatics,
Design and Use of Earth Observation Image Content Tools Mihai Datcu(1, 2), Daniele Cerra(1), Houda Chaabouni-Chouayakh(1), Amaia de Miguel(1), Daniela.
Guillaume-Alexandre Bilodeau
Bag-of-Visual-Words Based Feature Extraction
Radar Micro-Doppler Analysis and Rotation Parameter Estimation for Rigid Targets with Complicated Micro-Motions Peng Lei, Jun Wang, Jinping Sun Beijing.
Systems Biology for Translational Medicine
NONPARAMETRIC METHODs (NPM) OF POWER SPECTRAL DENSITY ESTIMATION P. by: Milkessa Negeri (…M.Tech) Jawaharlal Nehru Technological University,India December.
IGRASS2011 An Interferometric Coherence Optimization Method Based on Genetic Algorithm in PolInSAR Peifeng Ma, Hong Zhang, Chao Wang, Jiehong Chen Center.
Radio Propagation Simulation Based on Automatic 3D Environment Reconstruction D. He A novel method to simulate radio propagation is presented. The method.
EE513 Audio Signals and Systems
Model generalization Brief summary of methods
Lecture 5: Phasor Addition & Spectral Representation
2011 International Geoscience & Remote Sensing Symposium
Presenter: Shih-Hsiang(士翔)
Combination of Feature and Channel Compensation (1/2)
Maximum Likelihood Estimation (MLE)
Presentation transcript:

SCENE CLASS RECOGNITION USING HIGH RESOLUTION SAR/INSAR SPECTRAL DECOMPOSITION METHODS Anca Popescu, Inge Gavat University Politehnica Bucharest (UPB) Mihai Datcu German Aerospace Center (DLR) IGARSS July 2011, Vancouver, Canada University POLITEHNICA Bucharest Faculty of Electronics, Telecommunications and Information Technology

Motivation: High resolution scene category indexing, large number of structures visible in urban sites Non – parametric feature extraction methods

Summary Introduction Data descriptors Spectral features Spectral components Experimental data Classification results Conclusions

Introduction Study of value adding processing methods for SLC and InSAR data, for scene class recognition

Introduction Study of value adding processing methods for SLC and InSAR data, for scene class recognition Concept: Make use of the information contained in the phase of the SAR signal

Data descriptors – spectral features Direct estimation from spectra based on spectral differences

Data model The 2-D signal model: Where complex amplitude of the k th sinusoid unknown frequencies of the k th sinusoid 2-D noise Data descriptors spectral components estimation Problem: Estimate the parameters of the sinusoidal signals:

J. Li, P. Stoica: “Efficient Mixed-Spectrum Estimation with Applications to Target Feature Extraction”, IEEE Transactions on Signal Processing, 44, 1996, Model choice: minimize NLS criterion: Peak of the 2-D periodogram Algorithm preparations: if α k and f k are known, minimize cost function for the k th sinusoid is: Height of the peak (complex) Data descriptors spectral components estimation

Data descriptors spectral components estimation

AKAIKE Information Criterion – model order selection Estimates the expected Kullback-Leibler information between the model generating the data and a candidate model Model selection: = parameter to be estimated from empirical data y Best Model: Minimum AIC value y = generated from f(x), X is a random variable Log likelihood function for model selection: Data descriptors spectral components estimation

Goal: asses parameter’s capability to discriminate scene classes Evaluation: Accuracy = (TP+TN) / (TP+TN+FP+FN) Methodology for scene class indexing

Test Site – Bucharest, Romania TerraSAR-X High Resolution Spotlight: LAN 130

Frequency of classes in database: dominant classes: tall blocks, green areas, urban fabric, commercial and industrial sites Experimental data – TSX LAN-130 Test Site – Bucharest, Romania

1650 SLC patches, 200 x 200 m Water course/ water body Stadion Very tall buildingTall Block Industrial Site Test Site – Patch database formation Interferometric data

Spectral Centroid, Flux, and Rolloff (azimuth and range) Mean and variance of most significant 3 cepstral coefficients Results – Spectral and cepstral parameters

Relax parameter α k (modulus representation), selection of six random components from the estimated stack Results – Spectral components Dense urban area, mostly tall blocks Green area, small vegetation

Reconstructed data from estimated spectral components and original SAR patch Results – Spectral Components

Results – Scene Class Recognition SLC/InSAR True Negative Rate indicator 23 scene classes discoverable with SLC database 15 scene classes discoverable with InSAR database

Results – Scene Class Recognition SLC – Spectral Features and Spectral Components Accuracy indicator Class Spectral components Spectral features

Influence of interferogram spectral features on classfication accuracy Results – Scene Class Recognition SLC / InSAR InSAR SLC

Evaluation of the capability of spectral parameters to discriminate scene classes for complex HR TerraSAR-X data Spectral estimation method for high resolution data characterization and reconstruction, based on RELAX algorithm. Evaluation of the capability of spectral components to discriminate scene classes for complex HR TerraSAR-X data Accuracy of recognition better than 80% for main class training Acknowledgements to DLR team for providing the interferometric data: Nico Adam, Christian Minet, Nestor Yague-Martinez, Helko Breit. Conclusions

Thank you for your attention!