Go to slide:
1: Neural Network Empirical Solutions for Remote Sensing Problems
2: Recommended Reading
3: Outline
4: Continuous Mapping
5: Mapping: examples
6: ANN - Nonlinear Input to Output Mapping
7: A neuron (unit, PE) from inside
8: Activation Function
9: NN as a universal tool for approximation or continuous mapping
10: NN training
11: NNs vs. Regressions
12: Main properties of NNs:
13: Satellite Forward and Inverse Problems As Nonlinear Mappings
14: Satellite Data Utilization
15: Special Sensor Microwave Imager
16: Evolution of the NN architecture for SSM/I retrievals
17: Error budget (m/s) for different SSM/I wind speed algorithms (€15,000 buoy/SSMI matchups)
18: NN vs. GSW: Areal Coverage
19: Storm in Atlantic 1/5/98
20: Storm in Pacific 3/12/99
21: Storm in Atlantic 2/25/98
22: Validation: Buoys vs. GDAS
23: Columnar Water Vapor
24: Columnar Liquid Water
25: NN Empirical Forward Model for SSM/I
26: Comparison of physically based radiative transfer and empirical NN forward models (€7,000 buoy/SSMI matchups)
27: How to Apply NNs
28: How to Apply NNs
29: Conclusions (1)
30: Conclusions (2)