Abstract:
In image processing and video analysis field, the recognition ofoccluded faces and the
image with pose variations become a challenge. We therefore present a training
dataset based on variation of poses and angles of faces. It is based on video analysis
for extracting the face images of multiple persons based on different poses of face.
These different poses are detected, extracted, and then stored in a database for labelling.
The labelling is based on the pre-defined angles and view of a human face. Any video
having multiple faces can be used to create the dataset. The general framework is to
first detect all the faces in the video. After detection, the faces extracted and kept in an
initial database. Each face has given an entity name, all face poses are extracted from
the video by analyzing each frame. This process will continue for all detected faces.
Lastly it labels each face different pose according to the pre-defined labelling matrix
and a complete dataset will be generated. The main objective of the project is to
effectively detect faces with pose variation problem.