Multidimensional Vector Regression for Accurate and Low-Cost
Location Estimation in Pervasive Computing
Jeffrey J. Pan, James T. Kwok, Qiang Yang, Yiqiang Chen
Abstract:
In this paper, we present an algorithm for multidimensional vector
regression on data that are highly uncertain and nonlinear, and then apply
it to the problem of indoor location estimation in a wireless local area
network (WLAN). Our aim is to obtain an accurate mapping between the signal
space and the physical space without requiring too much human calibration
effort. This location estimation problem has traditionally been tackled
through probabilistic models trained on manually labeled data, which are
expensive to obtain. In contrast, our algorithm adopts Kernel Canonical
Correlation Analysis (KCCA) to build a nonlinear mapping between the
signal-vector space and the physical location space by transforming data in
both spaces into their canonical features. This allows the pairwise
similarity of samples in both spaces to be maximally correlated using
kernels. We use a Gaussian kernel to adapt to the noisy characteristics of
signal strengths and a Matérn kernel to sense the changes in physical
locations. By using real data collected in an 802.11 wireless LAN
environment, we achieve accurate location estimation for pervasive
computing while requiring a much smaller set of labeled training data than
previous methods.
IEEE Transactions on Knowledge and Data Engineering, 18(9):1181-1193, Sept 2006.
Pdf:
http://www.cse.ust.hk/~jamesk/papers/tkde06.pdf
Back to James Kwok's home page.