As a well known fixed-point iteration algorithm for kernel
density mode-seeking, Mean-Shift has attracted wide attention
in pattern recognition field. To date, Mean-Shift algorithm
is typically implemented in a batch way with the
entire data set known at once. In this paper, based on
stochastic gradient optimization technique, we present the
stochastic gradient Mean-Shift (SG-MS) along with its approximation
performance analysis. We apply SG-MS to the
speedup of Gaussian blurring Mean-Shift (GBMS) clustering.
Experiments in toy problems and image segmentation
show that, while the clustering accuracy is comparable between
SG-GBMS and Naive-GBMS, the former significantly
outperforms the latter in running time.
Xiaotong Yuan, Stan Z. Li