Strategic Objectives
• Master the mathematical foundations of high-dimensional data reduction.
• Implement real-time compression to eliminate system lag on high-speed belts.
• Optimize bandwidth management for seamless sensor-to-processor transmission.
• Balance visual fidelity with computational speed using state-of-the-art algorithms.
The Core Challenge
Hyperspectral sensors generate staggering amounts of data that overwhelm traditional networks, causing critical delays in real-time industrial and scientific applications.
01
The Hyperspectral Paradigm
02
The Architecture of Data Cubes
03
Information Theory Foundations
04
The Real-Time Constraint
05
Lossless Compression Techniques
06
Lossy Strategies and Artifacts
07
Signal Processing Essentials
08
Principal Component Analysis
09
Wavelet Transformations
10
Vector Quantization
11
The CCSDS Standard
12
Spectral Unmixing
13
Bandwidth Management
14
Hardware Acceleration with FPGAs
15
GPU Acceleration Strategies
16
Predictive Coding Models
17
Compressed Sensing
18
Machine Learning for Compression
19
Error Control and Resilience
20
Performance Metrics
21