Title: High-Performance Distributed Multimedia Computing
1High-Performance Distributed Multimedia Computing
- Frank Seinstra, Jan-Mark Geusebroek
MultimediaN (BSIK Project)
Intelligent Systems Lab AmsterdamInformatics
InstituteUniversity of Amsterdam
2MultimediaN and DAS-3
3MultimediaN and high-performance computing
Van Essen et al. Science 255, 1999.
4A Real Problem, part 1
- News Broadcast - September 21, 2005 (see
video1.wmv)
- Police investigating over 80.000 (!) CCTV
recordings - First match found no earlier than 2.5 months
after July 7 attacks
5Image/Video Content Analysis
- Lots of research benchmark evaluations
- PASCAL-VOC (10,000 images), TRECVID (200 hours
of video)
- A Problem of scale
- At least 30-50 hours of processing time per hour
of video! - BeeldGeluid gt 20.000 hours of TV broadcasts per
year - NASA gt over 850 Gb of hyper-spectral image data
per day - London Underground gt over 120.000 years of
processing !!!
6High Performance Computing
- Solution
- Very, very large scale parallel and distributed
computing - New Problem
- Very, very complicated software
Solution tool to make parallel distributed
computing transparent to user
User
Wide-Area Grid Systems
7Parallel-Horus Features (1)
Parallel-Horus
Sequential API
Parallelizable Patterns
Seinstra et al., Parallel Computing,
28(7-8)967-993, August 2002
8Parallel-Horus Features (2)
Seinstra et al., IEEE Trans. Par. Dist. Syst.,
15(10)865-877, October 2004
9Extensions for Distributed Computing
- Wide-Area Multimedia Services
Parallel Horus Client
Parallel Horus Server
Parallel Horus Servers
Parallel Horus Servers
Parallel Horus Client
- User transparency?
- Abstractions techniques?
- Grid connectivity problems?
10A Real Problem, part 2
LambdaRAM ??
may be time-critical!
11Color-Based Object Recognition (1)
- Our Solution
- Place retina over input image
- Each of 37 retinal areas serves as a receptive
field - For each receptive field
- Obtain set of local histograms, invariant to
shading / lighting - Estimate Weibull parameters ß and ? for each
histogram - Hence scene description by set of 37x4x3 444
parameters
Geusebroek, British Machine Vision Conference,
2006.
12Color-Based Object Recognition (2)
- Learning phase
- Set of 444 parameters is stored in database
- So learning from 1 example, under single visual
setting
a hedgehog
- Recognition phase
- Validation by showing objects under at least 50
different conditions - Lighting direction
- Lighting color
- Viewing position
13Amsterdam Library of Object Images (ALOI)
- In laboratory setting
- 300 objects correctly recognized under all (!)
visual conditions - 700 remaining objects missed under extreme
conditions only
Geusebroek et al., Int. J. Comput. Vis..
61(1)103-112, January 2005
14Example Object Recognition
See also http//www.science.uva.nl/fjseins/aibo.
html
15Example Object Recognition
(see video2.wmv)
Demonstrated live (a.o.) at ECCV 2006, June 8-11,
2006, Graz, Austria
16Performance / Speedup on DAS-2
Single cluster, client side speedup
Four clusters, client side speedup
- Recognition on single machine /- 30 seconds
- Using multiple clusters up to 10 frames per
second - Insightful even distant clusters can be used
effectively for close to real-time recognition
17Results applicability
- Beneficial
- Performance gains largely obtained for free
- With Parallel-Horus we can build similar complex
Grid applications in a matter of hours
18Current Future Work
- Very Large-Scale Distributed Multimedia
Computing - Overcome practical annoyances
- Software portability, firewall circumvention,
authentication, - Optimization and efficiency
- Tolerant to dynamic Grid circumstances,
- Systematic integration of MM-domain-specific
knowledge, - Deal with non-trivial communication patterns
- Heavy intra- inter-cluster communication,
- Reach the end users
- Programming models, execution scenarios,
- Collaboration with VU (Prof. Henri Bal) GridLab
- Ibis www.cs.vu.nl/ibis/
- Grid Application Toolkit www.gridlab.org
19Conclusions
- Effective integration of results from two largely
distinct research fields - Ease of programming gt quick solutions
- With DAS-3 / StarPlane we can start to take on
much more complicated problems
- But most of all
- DAS-3 very significant for future MM research
20The End
(see video3.avi)