Model
Digital Document
Publisher
Florida Atlantic University
Description
Digital videos and images are effective media for capturing spatial and ternporal
information in the real world. The rapid growth of digital videos has motivated
research aimed at developing effective algorithms, with the objective of obtaining useful
information for a variety of application areas, such as security, commerce, medicine,
geography, etc. This dissertation presents innovative and practical techniques, based on
statistics and machine learning, that address some key research problems in video and
image analysis, including video stabilization, object classification, image segmentation,
and video indexing.
A novel unsupervised multi-scale color image segmentation algorithm is proposed.
The basic idea is to apply mean shift clustering to obtain an over-segmentation, and
then merge regions at multiple scales to minimize the MDL criterion. The performance
on the Berkeley segmentation benchmark compares favorably with some existing approaches.
This algorithm can also operate on one-dimensional feature vectors representing
each frame in ocean survey videos, which results in a novel framework for building
a hierarchical video index. The advantage is to provide the user with the flexibility
of browsing the videos at arbitrary levels of detail, which makes it more efficient for users to browse a long video in order to find interesting information based on the
hierarchical index. Also, an empirical study on classification of ships in surveillance
videos is presented. A comparative performance study on three classification algorithms is
conducted. Based on this study, an effective feature extraction and classification algorithm
for classifying ships in coastline surveillance videos is proposed. Finally, an empirical
study on video stabilization is presented, which includes a comparative performance study
on four motion estimation methods and three motion correction methods. Based on this
study, an effective real-time video stabilization algorithm for coastline surveillance is
proposed, which involves a novel approach to reduce error accumulation.
information in the real world. The rapid growth of digital videos has motivated
research aimed at developing effective algorithms, with the objective of obtaining useful
information for a variety of application areas, such as security, commerce, medicine,
geography, etc. This dissertation presents innovative and practical techniques, based on
statistics and machine learning, that address some key research problems in video and
image analysis, including video stabilization, object classification, image segmentation,
and video indexing.
A novel unsupervised multi-scale color image segmentation algorithm is proposed.
The basic idea is to apply mean shift clustering to obtain an over-segmentation, and
then merge regions at multiple scales to minimize the MDL criterion. The performance
on the Berkeley segmentation benchmark compares favorably with some existing approaches.
This algorithm can also operate on one-dimensional feature vectors representing
each frame in ocean survey videos, which results in a novel framework for building
a hierarchical video index. The advantage is to provide the user with the flexibility
of browsing the videos at arbitrary levels of detail, which makes it more efficient for users to browse a long video in order to find interesting information based on the
hierarchical index. Also, an empirical study on classification of ships in surveillance
videos is presented. A comparative performance study on three classification algorithms is
conducted. Based on this study, an effective feature extraction and classification algorithm
for classifying ships in coastline surveillance videos is proposed. Finally, an empirical
study on video stabilization is presented, which includes a comparative performance study
on four motion estimation methods and three motion correction methods. Based on this
study, an effective real-time video stabilization algorithm for coastline surveillance is
proposed, which involves a novel approach to reduce error accumulation.
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