The problem of cross-domain face recognition
seeks to identify facial images obtained from different
domains, and it is gaining popularity due to its numerous
applications in law enforcement identification and
camera surveillance Existing algorithms typically fail to
fully exploit semantic information for identifying crossdomain faces, which could be a strong clue for
recognition. In this paper, we present an efficient
algorithm for cross-domain face recognition that makes
use of semantic information in conjunction with deep
convolutional neural networks (CNN). We start with a
soft face parsing algorithm that measures the boundaries
of facial components as probabilistic values. For cross
domain face recognition, we propose a hierarchical soft
semantic representation framework. CNN-derived deep
features are computed and combined. Which could fully
exploit the same semantic clue across cross-domain
faces. We present extensive experiments to show that the
proposed soft semantic representation algorithm
outperforms state-of-the-art methods.