Dongxu Yang, Meng Cao Supervisor: Prabin.  Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum.

Slides:



Advertisements
Similar presentations
Digtal Signal Processing And Modeling The Design of FIR Least Squares Inverse Filters Chapter Application / KIM.
Advertisements

Underwater Acoustic MIMO Channel Capacity
1. INTRODUCTION In order to transmit digital information over * bandpass channels, we have to transfer the information to a carrier wave of.appropriate.
Authors: David N.C. Tse, Ofer Zeitouni. Presented By Sai C. Chadalapaka.
AGC DSP AGC DSP Professor A G Constantinides©1 Modern Spectral Estimation Modern Spectral Estimation is based on a priori assumptions on the manner, the.
Microphone Array Post-filter based on Spatially- Correlated Noise Measurements for Distant Speech Recognition Kenichi Kumatani, Disney Research, Pittsburgh.
Sampling and quantization Seminary 2. Problem 2.1 Typical errors in reconstruction: Leaking and aliasing We have a transmission system with f s =8 kHz.
OPTIMUM FILTERING.
1/44 1. ZAHRA NAGHSH JULY 2009 BEAM-FORMING 2/44 2.
Digital Image Processing Chapter 5: Image Restoration.
1 Spectrum Sensing Marjan Hadian. 2 Outline Cognitive Cycle Enrgy Detection Matched filter cyclostationary feature detector Interference Temperature Spectral.
Goals of Adaptive Signal Processing Design algorithms that learn from training data Algorithms must have good properties: attain good solutions, simple.
An Overview of Delay-and-sum Beamforming
دانشگاه صنعتي اصفهان دانشكده برق و كامپيوتر Various Beamformer Structures Suitable For Smart Antennas ارائه کننده: آرش میرزایی ( ) ارائه مقاله تحقيقي.
Matched Filters By: Andy Wang.
Dept. E.E./ESAT-STADIUS, KU Leuven homes.esat.kuleuven.be/~moonen/
Chapter 5ELE Adaptive Signal Processing 1 Least Mean-Square Adaptive Filtering.
Principles of the Global Positioning System Lecture 11 Prof. Thomas Herring Room A;
For 3-G Systems Tara Larzelere EE 497A Semester Project.
Computer Vision - Restoration Hanyang University Jong-Il Park.
Dept. of EE, NDHU 1 Chapter Three Baseband Demodulation/Detection.
Eigenstructure Methods for Noise Covariance Estimation Olawoye Oyeyele AICIP Group Presentation April 29th, 2003.
Nico De Clercq Pieter Gijsenbergh Noise reduction in hearing aids: Generalised Sidelobe Canceller.
Define Problem Select Appropriate Methods Obtain and store sample Pre-treat sample Perform required measurements Compare results with standards Apply necessary.
Physics 114: Exam 2 Review Lectures 11-16
Blind Beamforming for Cyclostationary Signals
Multiuser Detection (MUD) Combined with array signal processing in current wireless communication environments Wed. 박사 3학기 구 정 회.
ECE 8443 – Pattern Recognition ECE 8423 – Adaptive Signal Processing Objectives: Deterministic vs. Random Maximum A Posteriori Maximum Likelihood Minimum.
ECE 8443 – Pattern Recognition ECE 8423 – Adaptive Signal Processing Objectives: Signal and Noise Models SNIR Maximization Least-Squares Minimization MMSE.
Ali Al-Saihati ID# Ghassan Linjawi
Nico De Clercq Pieter Gijsenbergh.  Problem  Solutions  Single-channel approach  Multichannel approach  Our assignment Overview.
Unit-V DSP APPLICATIONS. UNIT V -SYLLABUS DSP APPLICATIONS Multirate signal processing: Decimation Interpolation Sampling rate conversion by a rational.
Image Restoration.
BY Siyandiswa Juanitta Bangani Supervisor: Dr R.Van Zyl
Performance of Digital Communications System
An Introduction to Blind Source Separation Kenny Hild Sept. 19, 2001.
LEAST MEAN-SQUARE (LMS) ADAPTIVE FILTERING. Steepest Descent The update rule for SD is where or SD is a deterministic algorithm, in the sense that p and.
Study of Broadband Postbeamformer Interference Canceler Antenna Array Processor using Orthogonal Interference Beamformer Lal C. Godara and Presila Israt.
A Semi-Blind Technique for MIMO Channel Matrix Estimation Aditya Jagannatham and Bhaskar D. Rao The proposed algorithm performs well compared to its training.
Digital Communications Chapeter 3. Baseband Demodulation/Detection Signal Processing Lab.
Microphone Array Project ECE5525 – Speech Processing Robert Villmow 12/11/03.
Space Time Codes. 2 Attenuation in Wireless Channels Path loss: Signals attenuate due to distance Shadowing loss : absorption of radio waves by scattering.
Beamformer dimensionality ScalarVector Features1 optimal source orientation selected per location. Wrong orientation choice may lead to missed sources.
Smart antenna Smart antennas use an array of low gain antenna elements which are connected by a combining network. Smart antennas provide enhanced coverage.
V- BLAST : Speed and Ordering Madhup Khatiwada IEEE New Zealand Wireless Workshop 2004 (M.E. Student) 2 nd September, 2004 University of Canterbury Alan.
Chapter 5 Image Restoration.
Baseband Receiver Receiver Design: Demodulation Matched Filter Correlator Receiver Detection Max. Likelihood Detector Probability of Error.
Chance Constrained Robust Energy Efficiency in Cognitive Radio Networks with Channel Uncertainty Yongjun Xu and Xiaohui Zhao College of Communication Engineering,
Data Communications to Train From High-Altitude Platforms
Performance of Digital Communications System
Learning Theory Reza Shadmehr Distribution of the ML estimates of model parameters Signal dependent noise models.
Computacion Inteligente Least-Square Methods for System Identification.
Image Restoration. Image restoration vs. image enhancement Enhancement:  largely a subjective process  Priori knowledge about the degradation is not.
Antenna Arrays and Automotive Applications
ARENA08 Roma June 2008 Francesco Simeone (Francesco Simeone INFN Roma) Beam-forming and matched filter techniques.
Institute for Experimental Mathematics Ellernstrasse Essen - Germany DATA COMMUNICATION introduction A.J. Han Vinck May 10, 2003.
Locating a Shift in the Mean of a Time Series Melvin J. Hinich Applied Research Laboratories University of Texas at Austin
A New Technique for Sidelobe Suppression in OFDM Systems
Physics 114: Exam 2 Review Weeks 7-9
Optimum Passive Beamforming in Relation to Active-Passive Data Fusion
Lecture 1.30 Structure of the optimal receiver deterministic signals.
Lecture 11 Image restoration and reconstruction II
I. Previously on IET.
Image Analysis Image Restoration.
Chapter 2 Minimum Variance Unbiased estimation
Modern Spectral Estimation
Analysis of Adaptive Array Algorithm Performance for Satellite Interference Cancellation in Radio Astronomy Lisha Li, Brian D. Jeffs, Andrew Poulsen, and.
Microphone Array Project
Principles of the Global Positioning System Lecture 11
Presentation transcript:

Dongxu Yang, Meng Cao Supervisor: Prabin

 Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum Beamforming

 A Beamformer is a processor used with an array of sensors to provide a universal form of spatial filtering  The sensor array collects spatial samples of propagating wave fields  The objective is to obtain the signal arriving from a desired direction in the presence of noise and interfering signals

The Beamformer performs spatial filtering to separate signals that have overlapping frequency content but from different directions

More universal and complicated one

 Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum Beamforming

 We know the direction as well as the frequency band of the signal which we want to obtain  But we don’t have any knowledge about the statistics of the array data  So we just have a desired response

 Least-squares(LS) criterion Minimizing the squared error between the actual and desired response at P points (θ i, ω i ), 1 ≤ i ≤ P. If P > N, then we obtain the overdetermined least squares problem where Provided AA H is invertible, then the solution is given as where A + =(AA H ) -1 A is the pseudo inverse of A.

 Simulation: ◦ J=6, K=8 ◦ For θ=10⁰ and f=6kHz~10kHz r(10⁰,6kHz~10kHz)=1 ◦ For other θ and f, r(θ,f)=0

 Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum Beamforming Multiple Sidelobe Canceller Use of Reference Signal Maximization of Signal to Noise Ratio Linearly Constrained Minimum Variance

 We know some statistics of the data received at the array, so we can make use of this.  Weights are based on the statistics of the data.  Data independent v.s. statistically optimum  Different approaches: ◦ Multiple Sidelobes Canceller ◦ Use of Reference Signal ◦ Maximization of Signal to Noise Ratio ◦ Linearly Constrained Minimum Variance

◦ We want to cancel the interference signal in the main channel with the help of the auxiliary channels. ◦ Get minimized output power when desired signal is absence. ◦ The weights:

◦ Sensor Array :  N_primary=1,  N_auxiliary=5,  K=6,  fs =4e4 Hz, ◦ Main channel is a 5 th order LPF ◦ Signal:  Desired ⁰,  Interference ⁰,  White Gaussian ⁰, with the power of -10dBW,

At 4000Hz Main channel auxiliary channel subtract

 Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum Beamforming Multiple Sidelobe Canceller Use of Reference Signal Maximization of Signal to Noise Ratio Linearly Constrained Minimum Variance

◦ We know what the desired signal looks like ◦ We want to pick up the desired signal ◦ We should minimize the difference between the reference signal and the output. ◦ We can get the weights :

◦ Sensor Array :  J=6,  K=6,  fs =4e4 Hz, ◦ Signal:  Desired ⁰,  Interference ⁰,  Another ⁰,  White Gaussian with the power of -10dBW,

Reference signal

◦ Sensor Array :  J=6,  K=1,  fs =4e4 Hz, ◦ Signal:  Desired ⁰,  Interference ⁰,

Reference signal

 Problem: ◦ The signal in the same frequency band can not be filtered. ◦ The desired signal may be all cancelled  ◦ The figure on the right shows the direction response at f=4000Hz

 Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum Beamforming Multiple Sidelobe Canceller Use of Reference Signal Maximization of Signal to Noise Ratio Linearly Constrained Minimum Variance

◦ We know the statistical characteristic of the desired signal and the interference signal ◦ We want the maximum SNR ◦ So the weights:

◦ Sensor Array :  J=6,  K=6,  fs =4e4 Hz, ◦ Signal:  Desired ⁰,  Interference ⁰,  White Gaussian -10dBW

SNR=141.6

At 4000Hz

 Review of the Beamformer  Realization of the Beamforming Data Independent Beamforming Statistically Optimum Beamforming Multiple Sidelobe Canceller Use of Reference Signal Maximization of Signal to Noise Ratio Linearly Constrained Minimum Variance

◦ We want the signals from the direction of interest are passed with specified gain and phrase ◦ We want minimum output signal power so that least interference signal is added. ◦ The weights:

◦ Sensor Array :  J=6,  K=6,  fs =4e4 Hz, ◦ Signal:  Desired ⁰,  Interference ⁰,  Another interference  White Gaussian -10dBW

Desierd signal sourecs Power: 0.75W Total output Power: W

At 4000Hz

TypeMSCReference Signal Max SNRLCMV Criterion Optimum Weights AdvantagesSimpleDirection of desired signal can be unknown True maximizatio n of SNR Flexible and general constraints DisadvantagesRequires absence of desired signal for weight determinati on Must generate reference signal Must know Rs and Rn, Solve eigenproble m for weights Computation of constrained weight vector