Speaker: Ali Rahimi , MIT CSAIL Vision Group
Date: Friday, October 28 2005
Abstract:
Many problems in machine perception can be framed as mapping one time series to another time series. In tracking, for example, one transforms a time series of observations from sensors to a time series describing the pose of a target. Defining and implementing such transformations by hand is a tedious process, requiring detailed models of the time series involved. I will describe a semi-supervised learning algorithm that learns memoryless transformations of time series from a few example input-output mappings. The algorithm searches for a smooth function that fits the training examples and, when applied to the input time series, produces a time series that evolves according to assumed dynamics. The learning procedure is fast and lends itself to a closed-form solution. I relate this algorithm and its unsupervised extension to nonlinear system identification and manifold learning techniques. I demonstrate it on the tasks of tracking RFID tags from signal strength measurements, recovering the pose of rigid objects, deformable bodies, and articulated bodies from video sequences, and tracking a target in a completely uncalibrated network of sensors. For these tasks, this algorithm requires significantly fewer examples compared to fully-supervised regression algorithms or semi-supervised learning algorithms that do not take the dynamics of the output time series into account.
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.