Moving Objects Detection with a Moving Camera: A Comprehensive Review
- URL: http://arxiv.org/abs/2001.05238v1
- Date: Wed, 15 Jan 2020 11:12:51 GMT
- Title: Moving Objects Detection with a Moving Camera: A Comprehensive Review
- Authors: Marie-Neige Chapel and Thierry Bouwmans
- Abstract summary: Methods are grouped according to eight different approaches: panoramic background subtraction, dual cameras, motion compensation, subspace segmentation, motion segmentation, plane+parallax, multi planes and split image in blocks.
A reminder of methods for static cameras is provided as well as the challenges with both static and moving cameras.
- Score: 2.5889737226898437
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: During about 30 years, a lot of research teams have worked on the big
challenge of detection of moving objects in various challenging environments.
First applications concern static cameras but with the rise of the mobile
sensors studies on moving cameras have emerged over time. In this survey, we
propose to identify and categorize the different existing methods found in the
literature. For this purpose, we propose to classify these methods according to
the choose of the scene representation: one plane or several parts. Inside
these two categories, the methods are grouped according to eight different
approaches: panoramic background subtraction, dual cameras, motion
compensation, subspace segmentation, motion segmentation, plane+parallax, multi
planes and split image in blocks. A reminder of methods for static cameras is
provided as well as the challenges with both static and moving cameras.
Publicly available datasets and evaluation metrics are also surveyed in this
paper.
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