Object Detection in Image Using Particle Swarm Optimization
Loading...
Files
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Image matching is a key component in almost any image analysis process. Image
matching is crucial to a wide range of applications, such as in navigation, guidance,
automatic surveillance, robot vision, and in mapping sciences. Any automated system for
three-dimensional point positioning must include a potent procedure for image matching.
Most biological vision systems have the talent to cope with changing world. Computer
vision systems have developed in the same way. For a computer vision system, the ability
to cope with moving and changing objects, changing illumination, and changing
viewpoints is essential to perform several tasks. Object detection is necessary for
surveillance applications, for guidance of autonomous vehicles, for efficient video
compression, for smart tracking of moving objects, for automatic target recognition
(ATR) systems and for many other applications. Cross-correlation and related techniques
have dominated the field since the early fifties. Conventional template matching
algorithm based on cross-correlation requires complex calculation and large time for
object detection, which makes difficult to use them in real time applications. The
shortcomings of this class of image matching methods have caused a slow-down in the
development of operational automated correlation systems. In the proposed work particle
swarm optimization & its variants based algorithm is used for detection of object in
image. Implementation of this algorithm reduces the time required for object detection
than conventional template matching algorithm. Algorithm can detect object in less
number of iteration & hence less time & energy than the complexity of conventional
template matching. This feature makes the method capable for real time implementation.
In this thesis a study of particle Swarm optimization algorithm is done & then
formulation of the algorithm for object detection using PSO & its variants is implemented
for validating its effectiveness.
Description
M.E. (Electronics Instrumentation and Control Engineering)
