DocumentCode
1101236
Title
Optic flow field segmentation and motion estimation using a robust genetic partitioning algorithm
Author
Huang, Yan ; Palaniappan, Kannappan ; Zhuang, Xinhua ; Cavanaugh, Joseph E.
Author_Institution
AT&T Bell Labs., Middletown, NJ, USA
Volume
17
Issue
12
fYear
1995
fDate
12/1/1995 12:00:00 AM
Firstpage
1177
Lastpage
1190
Abstract
Optic flow motion analysis represents an important family of visual information processing techniques in computer vision. Segmenting an optic flow field into coherent motion groups and estimating each underlying motion is a very challenging task when the optic flow field is projected from a scene of several independently moving objects. The problem is further complicated if the optic flow data are noisy and partially incorrect. In this paper, the authors present a novel framework for determining such optic flow fields by combining the conventional robust estimation with a modified genetic algorithm. The baseline model used in the development is a linear optic flow motion algorithm due to its computational simplicity. The statistical properties of the generalized linear regression (GLR) model are thoroughly explored and the sensitivity of the motion estimates toward data noise is quantitatively established. Conventional robust estimators are then incorporated into the linear regression model to suppress a small percentage of gross data errors or outliers. However, segmenting an optic flow field consisting of a large portion of incorrect data or multiple motion groups requires a very high robustness that is unattainable by the conventional robust estimators. To solve this problem, the authors propose a genetic partitioning algorithm that elegantly combines the robust estimation with the genetic algorithm by a bridging genetic operator called self-adaptation
Keywords
computer vision; estimation theory; genetic algorithms; image segmentation; image sequences; motion estimation; coherent motion groups; computer vision; generalized linear regression model; motion estimation; optic flow field segmentation; robust genetic partitioning algorithm; self-adaptation; visual information processing techniques; Computer vision; Genetic algorithms; Image motion analysis; Information processing; Linear regression; Motion analysis; Motion estimation; Noise robustness; Optical noise; Optical sensors;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/34.476510
Filename
476510
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