With the recent efforts made by computer vision researchers,
more and more types of features have been designed
to describe various aspects of visual characteristics.
Modeling such heterogeneous features has become an increasingly
critical issue. In this paper, we propose a machinery
called the Heterogeneous Feature Machine (HFM)
to effectively solve visual recognition tasks in need of multiple
types of features. Our HFM builds a kernel logistic
regression model based on similarities that combine different
features and distance metrics. Different from existing
approaches that use a linear weighting scheme to combine
different features, HFM does not require the weights
to remain the same across different samples, and therefore
can effectively handle features of different types with different
metrics. To prevent the model from overfitting, we employ
the so-called group LASSO constraints to reducemodel
complexity. In addition, we propose a fast algorithm based
on co-ordin...
Liangliang Cao, Jiebo Luo, Feng Liang, Thomas S. H