Title: Remote Sensing New Tools for Security
1Remote Sensing New Tools for Security
- Harold Stone NEC Fellow, retired
2Talk Outline
- Past uses of Advanced Sensors
- New Sensor Technology
- The Data Mining/Data Decision Problem
- Approaches to Image Data Mining
3Past Uses of Advanced Sensors
4Some Interesting Examples
- UAV video surveillance
- Iran nuclear tracking High resolution public
satellite imagery - The World Trade Center and Aerial hyperspectral
imagery - Hurricane Katrina, satellite imagery to assess
contamination
5UAV Technology
Source NOAA Magazine, 21 Mar 2006
6UAV Technology
Payload 300 Kilos. Endurance 30 hours
Source NOAA Magazine, 21 Mar 2006
7Public Satellite Imagery
- National Council of Resistance of Iran (NCRI) a
clandestine organization that opposes the current
Iranian government (www.ncri-iran.org) - NCRI revealed detailed locations of Irans secret
nuclear program. The locations could be viewed
through public imagery - The satellite imagery showed an active nuclear
program that Iran denied existed.
8IRAN Nuclear Program
9IRAN Nuclear Program
Tehran, 16 November 2004
10IRAN Nuclear Program
Tehran, 16 November 2004
11IRAN Nuclear Program
Tehran, 16 November 2004
12IRAN Nuclear Program
Arak, 26 September 2002
13IRAN Nuclear Program
Arak, 27 February 2005
149/11 Hyperspectral Analysis
15 Sept. 2001
Before 11 Sept. 2001
15WTC Contamination
16WTC Contamination
17WTC Contamination
AVIRIS Data, 17 Sept. 2001
Source Roberts and Herold, 2004
18The Fluorocarbon Hazard
- 70,000 Kg of a fluorocarbon refrigerant were
delivered to WTC a week before 9/11. - It was stored in large tanks beneath the towers.
- Aerial imagery of the WTC site took multispectral
images to analyze contamination from plume. - Leaking fluorocarbons were discovered in the
plume and traced to the refrigerants.
19The Fluorocarbon Hazard
- The fluorocarbon in the presence of the fire
could produce phosgene gas. - The discovery of fluorocarbons in the plume
prompted remediation by a specially equipped team
who pumped the remaining refrigerant to safe
container storage.
Source RT Magazine, Aug. 2002
20Sensor Platforms
Source Roberts and Herold, 2004
21Scope of the problem
Source Cahill et al.
22Hurricane Katrina Aftermath
23Hurricane Katrina Aftermath
- Hurricane Katrina flooded Petrochemical plants
located in low lying areas of the Mississippi
River delta. - Resulting contamination
- Mississippi River
- Swamp (Bayou)
- Gulf of Mexico
- Sea, swamp, and river beds
- Satellite imagery was used to detect and
remediate the contamination
24RULLI
- Remote Ultra Low Light Imaging (Los Alamos
National Laboratory) - Remote sensing device using ultral low level
intensity - Single photon detector, gives X-Y-Time coordinate
of each photon
25RULLI
Source Albright et al, LANL
26RULLI Example
Source Ho et al, LANL
27RULLI Example
Source Ho et al, LANL
Source Priedhorsky et al, LANL
28Data Mining Decision Problem
29Too Much Data
- Satellite Imagery began in the late 1950s
- Image platforms have become numerous
- Sensor data per platform has increased enormously
- 4 channel imagery supplanted by 200 channel
hyperspectral - Resolution increase to a few meters
- Too much data collected per day to be analyzed by
humans
30Understanding Images
- Pixels are numbers
- Images show objects, regions, physical entities
- Problem Interpret the pixels. What do they
show?
31What to Seek
- Todays image may show nothing of interest.
- It may be very important for comparison with
future changes - Clouds, shadow, night occlude areas
- Difficult to detect occlusions automatically
- Areas of interest may be hidden or disguised
- Areas of interest may be similar to uninteresting
areas difficult to detect automatically
32The Genie Project
- One approach to data mining
33The Genie Project
- Work done at Los Alamos Theiler, Perkins,
Harvey and others - Method
- A human gives examples of interesting regions
- The system has a toolbox of image processing
functions - A genetic algorithm tries many combinations of
functions, rewarding successes, mutating
combinations, until it discovers an algorithm
that selects the interesting regions
34Example Find Golf Courses
Training Image
Human Input
Not golf course
Golf course
No class
Source Harvey et al
35The Synthesized Algorithm
4
10
7
Input Data
2
Mean
Define Region
Alt Seq. Open Close
Range
Mean
Variance
Close Open
Open Reconst
Intermediate Data
1
2
3
4
5
Fisher Linear Discriminator
Source Harvey et al
36Result Find Golf Courses
Training Image
Human Input
Source Harvey et al
37Result Find Golf Courses
Identified objects
Human Input
Source Harvey et al
38Applications
- Genie has been used for security applications by
Los Alamos National Lab - Results are classified
- LANL has continued and grown funding for Genie
based on its proven successes - Genie has broad applicability, but is high risk
because success is not assured - Genetic algorithm is difficult to assess, but
IT WORKS!
39KIM
40KIM Approach
Source Datcu and Seidel
41KIM Examples
Find landing places for small aircraft
Find structures, trees, and roads
Source Datcu and Seidel
42The Hard Problem
- Give meaning to pixels
- Mimic human image processing
- Find features, regions, remove noise and
occlusions - Genie compose graphics processes with genetic
algorithm - Kim detect features statistically
- Human guidance to build objects from pixels
- Genie goal and non-goal identification
- KIM semantic grouping of features
43Prospects for the Future
- Massive archival data
- New instruments, new ways to collect data
- New ways to analyze data and to make sense of it
- Human interaction will be embedded in the system
for the foreseeable future - The major limitation is the inability to extract
the information we need from the data we
have.Connect the dots