Artificial
Intelligence

Fall 2011
course
navigation

Nov 22

aside

http://www.crypto-class.org/ - another Standford online course; might be interesting for Info Theory folks.

computer vision

Finish discussion of computer vision.
Two examples:
Note particularly that people often use many steps in the processing, including the learning techniques we've discussed earlier as well as searching databases of known examples.
Other issues we haven't discussed: camera calibration, optics, stereo imaging, ... there's a lot of ongoing research in this area.

next topic : markov models

Today we're going to talk about the "big picture", *not* the math details. But we will look at some of those details - I've included some references here which I'd like you to look over; we will look into more detail next week.
Walk through
  1. basic idea of a "markov chain"
  2. generalization to a "hidden markov model"
  3. connections to finite state machines and formal grammers
The sorts of questions one would like to answer :
... and there are a variety of well known math-ish (matrix multiplication and Baysian probability) algorithms to do these things; that's why these are popular models, even though in practice they are somewhat simplistic.
A few examples of generators :

Readings

Textook:
ai-class.com:
wikipedia:
other:
This homework assignment looks very interesting.
http://cs.marlboro.edu/ courses/ fall2011/ai/ notes/ Nov_22
last modified Tuesday November 29 2011 12:16 am EST