Attribute-based people search in surveillance environments
Daniel A. Vaquero, Rogerio S. Feris, et al.
WACV 2009
We present a feature selection method for multivariate time-series prediction. It aims to use the best sliding window size and delay for each explanatory variable, which are usually fixed. The idea is to convert the original time-series into a set of cumulative sum with different length. The combinations of cumulative sum variables obtaining nonzero weights in sparse learning algorithms represent the optimal temporal effects from explanatory variables to the target variable. Experiments show that the method performs better than conventional methods in regression problems. © 2012 ICPR Org Committee.
Daniel A. Vaquero, Rogerio S. Feris, et al.
WACV 2009
Fei Wang, Jianying Hu, et al.
ICPR 2012
James E. Gentile, Nalini Ratha, et al.
BTAS 2009
Rudy Raymond, Tetsuro Morimura, et al.
ICPR 2012