Naïve Bayes For RadarMicro-Doppler Recognition
1. Introduction
Background
Motivation For Work
Review Of Relvant Papers
3. Naïve Bayesian Classifier
Definition
Assumption
Independence
Validity
Improved By PCA
Not Perfect
2. Data
Thales
Micro-Doppler
Classes
Wheeled
Personnel
Tracked
Unknown
Pre-Processing
FFT
Absolute
Decibel
Power
Clutter
Normalizing
Principal Component Analysis
Reference
Test
4. Performance Prediction
Probability Of Error
Bhattacharyya Bound
Cases
Wheeled vs Personnel
Wheeled vs Tracked
Tracked vs Personnel
Vehicles vs Tracked
Limits
Binary
Sub-Optimal
Better
Chernoff
Difficult
Assumptions
Probability Distributions
Multivariate Guassians
Equal Prior Probabilities
Sufficient Data To Estimate μ and Σ
6. Results
Variance
Range
Min 45%
Step 5%
Max 95%
Performance
Performance
Parameters
Pcc
Pdec
Pfa
R
Datasets
Frames
Duration
Reference
Correlation
Size
7. Conclusions
Use Of Bhattacharyya Bound
Performance Of Naïve Bayesian
The Pre Processing Steps
5. Test Strategy
Assessment Of Variance
Analysis Of Classifier at ±5%