How to Meet the Deadline for Packet Video - PowerPoint PPT Presentation

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How to Meet the Deadline for Packet Video

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for Packet Video Bernd Girod Mark Kalman Eric Setton Information Systems Laboratory Stanford University IPTV is Becoming a Reality Why Is Internet Video Hard? – PowerPoint PPT presentation

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Title: How to Meet the Deadline for Packet Video


1
How to Meet the Deadlinefor Packet Video
  • Bernd Girod
  • Mark Kalman
  • Eric Setton
  • Information Systems Laboratory
  • Stanford University


2
THE MEANING OF FREE SPEECH The acquisition by
eBay of Skype is a helpful reminder to the
world's trillion-dollar telecoms industry that
all phone calls will eventually be free . . . .
. . Ultimatelyperhaps by 2010voice may become a
free internet application, with operators making
money from related internet applications like
IPTV . . .
Economist, September 2005
3
IPTV is Becoming a Reality
Verizon 10M IPTV households by 2009
SBC (ATT) 18M IPTV households by 2007
IEEE Spectrum, Jan. 2005
4
Why Is Internet Video Hard?
Internet is a best-effort network . . .
Congestion Insufficient rate to carry all
traffic Packet loss Impairs perceptual
quality Delay Impairs interactivity of
services Zapping lt 500 ms
5
How to Meet the Deadline for Packet Video
6
How to Meet the Deadline for Packet Video
7
How to Meet the Deadline for Packet Video
  • Congestion, QoS, and fair sharing
  • Maximum-utility resource allocation for multiple
    video streams
  • Example video over wireless home networks
  • Congestion-distortion optimized packet scheduling
    (CoDiO)
  • Example P2P multicasting of live video
  • Packet scheduling for multicast trees

8
Measuring Congestion
EDelay Congestion
Traffic flow
  • Congestion in packet-switched network
  • queuing delay that packets experience,
  • weighted by size of the packet
  • averaged over all packets in the network

9
Congestion GrowsNonlinearly with Link Utilization
Congestion D seconds
C
Rate R
10
How 1B Users Share the Internet
Rate R
TCP Throughput
maximum transfer unit
Growing congestion
data rate
packet loss rate
p
round trip time
0.001
0.0001
0.1
0.01
  • Mahdavi, Floyd, 1997
  • Floyd, Handley, Padhye, Widmer, 2000

11
QoS vs. Best Effort
  • Reservation-ism
  • Voice and video need guaranteed QoS (bandwidth,
    loss, delay)
  • Requires admission control Busy tone when
    network is full
  • Best effort is fine for data applications
  • Best Effort-ism
  • Best Effort good enough for all applications
  • Real-time applications can be made adaptive to
    cope with any level of service
  • Overprovisioning always solves the problem, and
    its cheaper than QoS guarantees

12
Simple Model of A Shared Link
  • Link of capacity C is shared among k flows
  • Fair sharing each admitted flow uses rate RC/k
  • Homogeneous flows with same utility function u(R)
  • Total utility

C
Breslau, Shenker, 1998
13
Rigid Applications
u
  • Utility u0 below of minimum bit-rate B
  • Admit at most flows
  • With sufficient overprovisioning, no admission
    control needed, since

1
C/k
B
14
Elastic Applications
u(R)
  • Elastic applications convex utility function
    u(R)
  • All flows should be admitted best effort!

R
15
QoS vs. Best Effort for Video
  • H.264 video coding for 2 different testsequences
  • Video is elastic application . . . above a
    certain minimum quality
  • Bottleneck links admission control and dynamic
    rate control combined
  • Rate must be adapted to network throughput. How?
  • Utility function depends on content should use
    unequal rate allocation

Good picture quality
Foreman Mobile
Bad picture quality
16
Different Utility Functions
  • Better than utility-oblivious fair sharing
  • With rkgt0 ? Karush-Kuhn-Tucker conditions

uk
Equal-slope Pareto condition
Vilfredo Pareto 1848-1923
rk
17
Distribution of TV over WLAN
5 Mbps
11 Mbps
2 Mbps
Home Media Gateway
courtesy van Beek, 2004
18
Video over WLAN
Network Interface
playout buffer
802.11b
Transcoder
Receiver
Decoder
Video encoded at higher rate
Wireless Terminal
Controller
Kalman, van Beek, Girod 2005
19
Video over WLAN with Multiple Streams
Transcoder
Decoder
0
c0
0
Network Interface
Transcoder
Receiver

1
Decoder
c1
1


(Multi-Channel)

Transcoder
M
cM
Decoder
M
Controller
Wireless terminals
Kalman, van Beek, Girod 2005
20
Dynamic Estimation of R-D Curve
Scene cuts
R-D Model
Stuhlmüller et al. 2000
Parameters track weighted average of last
I-Frame, P-Frame and B-Frame
Rate ?
21
802.11b Transmission of 2 Video Streams
Link rates kbps
Channeltimeallocation
Transcoderbit-ratekbps
Backlogin frames
PSNRin dB
22
Video Distortion with Self Congestion
Good Picture quality
Bad picture quality
Bit-Rate kbps
23
Effect of Playout Delay and Loss Sensitivity
Foreman
Salesman
10
40 headroom
Simulations over ns-2 Link capacity 400 kb/s
24
1 sender
Simulation of 600 kbps link Latency 400 msec
380 kbps, 36 dB Highest sustainable video quality
420 kbps, 33.7 dB
25
Modeling Self-Congestionfor Packet Scheduling
  • Rate-distortion optimized packet scheduling
    (RaDiO) typically assumes independent delay pdfs
    for successive packet transmissions Chou, Miao,
    2001
  • Model delay pdf by exponential with varying shift

Probability distribution
delay
Setton, Girod, 2004
26
CoDiO Light Scheduler
I
B
B
B
P
Pictures to send
Schedule
27
CoDiO Scheduling Performance
Mother Daughter
News
30
25
Playout deadline (s)
Playout deadline (s)
Simulations over ns-2 Packet loss rate
2 Bandwidth 400 kb/s Propagation delay 50ms
28
CoDiO
ARQ
H.264/AVC _at_250 kb/s Link rate 400 kb/s,
propagation delay 50 ms 2 packet loss0.6
second playout deadline
29
CoDiO vs. RaDiO
Playout deadline (s)
Playout deadline (s)
Sequence Foreman Packet loss rate 2 Link
capacity 400 kb/s Propagation delay 50ms
Playout deadline (s)
30
Video Multicast over P2P Networks
  • Challenges
  • Limited bandwidth
  • Delay due to multi-hop transmission
  • Unreliability of peers
  • Our Approach Setton, Noh, Girod, 2005
  • Determine encoding rate as a function of network
    bandwidth
  • Build and maintain complementary multicast trees
  • Adapt media scheduling to network conditions and
    to content
  • Request retransmissions to mitigate losses
  • Related work
  • Chu, Rao, Zhang, 2000
  • Padmanabhan, Wang and Chou, 2003
  • Guo, Suh, Kurose, Towsley, 2003
  • Cui, Li, Nahrstedt, 2004
  • Do, Hua, Tantaoui, 2004
  • Hefeeda, Bhargava, Yau, 2004
  • Zhang, Liu, Li and Yum, 2005
  • Zhou, Liu, 2005
  • Chi, Zhang, Packet Video 2006

31
Experimental Setup
  • Network/protocol simulation in ns-2
  • 300 active peers
  • Random peer arrival/departure average life-time
    5 minutes
  • Over-provisioned backbone
  • Typical access rate distribution
  • Delay 5 ms/link congestion
  • Video streaming
  • H.264/AVC encoder _at_ 250 kb/s
  • 15 minute live multicast

Sripanidkulchai et al., 2004
Setton, Noh, Girod, 2005
32
Join and Rejoin Latencies
Simulations over ns-2, 300 peers Number of trees
4 Retransmissions enabled
Setton, Noh, Girod, 2005
33
P2P Video Multicast 64 out of 300 Peers
CoDiO retransmissions
No retransmissions
H.264 _at_ 250 kb/s2 second playout deadline for
all streams
34
P2P Video Multicast 64 out of 300 Peers
CoDiO retransmissions
No retransmissions
H.264 _at_ 250 kb/s2 second playout deadline for
all streams
35
CoDiO Scheduling for Multicast Trees
Child
Parent
P
I
B
P
P
B
B
Child
DI
DP3
DB
DB
DP2
DP1
DB
Setton, Noh, Girod, 2006
36
Gain by Multicast CoDiO
Foreman
Mother Daughter
30
40
Playout deadline (s)
Playout deadline (s)
Simulations over ns-2, 300 peers Number of
trees 4 Retransmissions enabled
Setton, Noh, Girod, 2006
37
Average Video Sequence for 75 Peers
Sender-driven CoDiO light 33.71 dB
Without prioritization 30.17 dB
H.264 _at_ 250 kb/s0.8 second playout deadline for
all streams
38
Conclusions
  • Must avoid congestion for low latency
  • Video streaming over bottlenecks (IPTV, WLAN . .
    . )combine admission control and rate control
  • R-D-aware rate allocation better than fair
    sharing
  • Packet scheduling should consider congestion
    rather than rate
  • Low-complexity CoDiO scheduler
  • P2P video multicast possible with low latency
  • Retransmissions effective with application-layer
    multicast
  • CoDiO extended to packet scheduling for multicast
    trees
  • Cross-layer paradigm
  • Media-aware transport ? superior system
    performance

39
The End
  • http//www.stanford.edu/bgirod/publications.html
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