DEPARTMENT OF COMPUTER SCIENCE AND ENGINEERING
UNIVERSITY OF CALIFORNIA, SAN DIEGO

CSE 252C: Selected Topics in Vision & Learning

Fall 2006

 

Students taking the course for four units should follow these project guidelines.  Here is the feedback form for presentations. Click here to join the class email-list.

Please read, reflect upon, and follow these presentation guidelines, kindly provided by Prof. Elkan.  Immediately after your presentation, please email to sjb+cse252c@cs a copy of your slides.  For ease of viewing, please make this copy be two slides per page in Adobe PDF.

The schedule of papers and presentations is below.  Participants who have not chosen a paper yet should look at the list of suggested papers and contact the instructor.

If you want to change your presentation date, please arrange a swap with another student and notify the instructor at least two weeks in advance.

SUGGESTED PAPERS

MEETING SCHEDULE

date

presenter

paper title

author(s)

discussion
board

slides

Sept. 21 organizational meeting    

 

 

Sept. 26 Boris Babenko Keypoint Recognition using Randomized Trees V. Lepetit and P. Fua

here

pdf

Sept. 28 Nadav Ben-Haim Scalable recognition with a vocabulary tree D. Nistér and H. Stewénius

here

ppt

Oct. 3 Tom Duerig Local Invariant Features Tutorial / Distinctive image features from scale-invariant keypoints T. Tuytelaars / D. Lowe

here

ppt

Oct. 5 Prof. Belongie @ Harvey Mudd for seminar    

 

 

Oct. 10 Anton Escobedo Behavior Recognition via Sparse Spatio-Temporal Features Dollár, Rabaud, Cottrell, Belongie

here

ppt

Oct. 12 Carolina Galleguillos Using Multiple Segmentations to Discover Objects and their Extent in Image Collections Russell et al.

here

pdf

Oct. 17 Marius Buibas Object recognition with features inspired by visual cortex T. Serre, L. Wolf, and T. Poggio

here

pdf

Oct. 19 Deborah Goshorn Aligning Sequences and Actions by Maximizing Space-Time Correlations Ukrainitz and Irani

here

pdf

Oct. 24 Iman Mostafavi Multi-Scale Contour Extraction Based on Natural Image Statistics Estrada and Elder

here

pdf

Oct. 26 Joshua Goshorn Tracking objects across cameras by incrementally learning inter-camera colour calibration and patterns of activity Gilbert and Bowden

here

ppt

Oct. 31 Nikhil Rasiwasia Video Inpainting Under Constrained Camera Motion / Video Inpainting of Occluding and Occluded Objects Patwardhan, Sapiro and Bertalmio

here

pdf

Nov. 2 Marius Buibas The Design of High-Level Features for Photo Quality Assessment Ke, Tang, Jing

here

pdf

Nov. 7 Tingfan Wu Extracting Subimages of an Unknown Category from a Set of Images Todorovic and Ahuja

here

pdf

ppt

Nov. 9 Anton Escobedo Learning to Detect Objects in Images via a Sparse, Part-Based Representation Agarwal, Awan and Roth

here

ppt

Nov. 14 Matt Tong / Carolina Galleguillos Recovering human body configurations: Combining segmentation and recognition / Multiple Object Class Detection with a Generative Model G. Mori et al. / K. Mikolajczyk et al.

here / here

ppt

ppt

Nov. 16 Paul Ruvolo / Nadav Ben-Haim A generative framework for real time object detection and classification (see also Ch. 3 of Ian's thesis) / Dimensionality Reduction by Learning an Invariant Mapping I. Fasel, B. Fortenberry, and J. Movellan / Hadsell, Chopra and LeCun

here / here

pdf

pdf

Nov. 21 Adam Bickett / Boris Babenko SVM-KNN: Discriminative Nearest Neighbor Classification for Visual Category Recognition / BoostMap: A Method for Efficient Approximate Similarity Rankings Zhang et al. / Athitsos et al.

here / here

pdf

pdf

Nov. 23 Thanksgiving    

 

 

Nov. 28 Tingfan Wu / Adam Bickett Image Completion Using Global Optimization / Vision-based mobile robot localization and mapping using scale-invariant features Komodakis and Tziritas / Se, Lowe and Little

here / here

ppt

pdf

Nov. 30 Project Presentations 10 minute project presentations
(reports and presentations)

 

 

 

OVERVIEW

CSE 252C is a graduate seminar devoted to recent research on pattern recognition and computer vision.

Students may enroll for one, two, or four units:

The class section id for CSE 252C is #570322.

The course is open to anyone who has already taken at least one graduate course in computer vision, artificial intelligence, or a closely related area. Appropriate courses at UCSD include CSE 250A, CSE 250B, CSE 252AB, CSE 254, CSE 253, CogSci 202, ECE 270A, and CSE 275A.

We will meet on Tuesdays and Thursdays from 2:00pm-3:20pm in U413-1 (University Center). The first meeting will be on Thursday September 21, and the final meeting will be on Thursday November 30, 2006.

Possible topics include:

Students are encouraged to investigate both fundamental algorithmic issues as well as application areas such as biometrics, content based image retrieval, texture synthesis, motion capture, and image based rendering.

The instructor is Serge Belongie, Assistant Professor, EBU3b room 4118. Office Hours: Tu 4-5pm, W 4-5pm.

Feel free to send email to sjb+cse252c@cs with any questions.

 

RELEVANT TEXTS

Pattern Recognition and Machine Learning, Bishop.
Computer Vision: A Modern Approach, Forsyth and Ponce
Introductory Techniques for 3-D Computer Vision Trucco and Verri
An Invitation to 3D Vision: From Images to Geometric Models, Y. Ma, S. Soatto, J. Kosecka, S. Sastry
Multiple View Geometry in Computer Vision by Hartley & Zisserman
The Geometry of Multiple Images by Faugeras, Luong, and Papadopoulo
Vision Science: Photons to Phenomenology by Stephen E. Palmer

 

SEMINAR ORGANIZATION

Each class meeting of 80 minutes will be divided into two parts.  First, a student will give a talk lasting about 60 minutes presenting a recent technical paper in detail.  In questions during the talk, and in the final 20 minutes, all seminar participants will discuss the paper and the issues raised by it.

Some papers will be theoretical, and some will be applied.  Two related applications papers may be discussed together.  Theoretical papers will typically be presented and discussed alone, to ensure that mathematical and algorithmic questions are discussed in sufficient depth.

In the first week, we will make a schedule of papers and presentations for the whole quarter.  With 10 participants, each student will make two separate presentations.  The procedure for one presentation is as follows:

Presentations will be evaluated, in a friendly way but with high standards.  Each  presentation should be prepared using LaTeX or Powerpoint.  You should copy equations, diagrams, charts, and tables as necessary from the paper for the presentation.

For each presentation, we will have a web-based discussion area.  Each seminar participant is expected to contribute at least one message to the discussion, before the presentation.  A message may ask an interesting question, point out a strength or weakness of the paper, or answer a question asked by someone else.  Messages should be thoughtful!

Each student will also do one term project following specific guidelines.  The project should be at the frontier of current research, and preferably closely inspired by one of the papers discussed in the class.  Project reports will be evaluated using these grading criteria.  There is a schedule for handing in a detailed project proposal, a draft project report, and then the final report.

The seminar will have no final exam.  Final grades will be based 50% on presentations and participation in class and in the web-based discussions.  The other 50% will be the project report.


Most recently updated on Sept. 6, 2006 by Serge Belongie.