Does anyone have any experience with developing or working on the autonomous robot problem, in particular developing the SLAM algorithm? I would like to know where would be a good place to get started on developing a very very basic version on SLAM. Also any pointers to resources on the topics (other than the obvious google searches) would be appreciated.
The book Probabilistic Robotics by Thrun, et al spends a good deal of time on SLAM. OpenSLAM has a lot of SLAM resources and implementations of different SLAM algorithms. 


openCV is your best bet for this, it is a large library that handles a ton of Computer Vision problems that has a great history, community, and support. 


Some of the people working on robots at the university bielefeld rely on the following papers in their work with a robot.
Another paper that could give you a starting point is:
Most of the paper should be found in google scholar. 


Probabilistic Robotics is definitely a great book to start from, but current algorithms have moved past much of the scope that it covers. Grisetti's TORO (available from OpenSLAM) is a speedy algorithm that can close loops in O(N) time (where N is the size of the loop). It might suit you under the following conditions:
Kaess' iSAM is very good if you want optimal accuracy (optimal in a leastsquares sense). It may suit you under the following conditions:
Finally, you can skim my IROS 2010 paper on flexible SLAM, which gives you a knob with which you can adjust the cost of closing a loop, where more cost means more accuracy. The cost can be set anywhere from O(N) to O(N^2). Even at its least accurate, it is still more accurate than TORO. Use it if:
Also consider the goodness of your initial pose estimates. When using a good laserscan matching algorithm in limited indoor areas, the pose drift can be quite small. This takes much of the accuracy burden off of SLAM, and the difference between the output of approximate techniques such as TORO and exact techniques such as iSAM becomes slim. Good luck,  Matt 


I know I'm coming to this party a bit late, but I have an extremely simple SLAM implementation that runs in MATLAB (or the free Octave) that is useful for learning the basics. The implementation is about as simple as it gets, comprising only 283 lines of code. Check it out here: https://github.com/randvoorhies/SimpleSLAM 


In addition, if you write C++, MRPT should be one of your choice in implementing SLAM. MRPT is Mobile Robot Programming Toolkit purposing on SLAM, computer vision and motion planning algorithm. You will find lots of easy examples and some useful applications like Kalman filter SLAM, graphSLAM, kinect 3D SLAM, etc.. here. 


Another late answer, but I just came across a tutorial on building EKF slam in Matlab or Octave by Dr. Joan Sola here: http://www.joansola.eu/JoanSola/eng/course.html. It's about 8 hours of video and it's a little slow, but it does walk you through a working implementation of SLAM. 

