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  • Search: subject:"Shape estimation"
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Year of publication
Subject
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Bacteria Foraging Algorithm 1 Curve Fitting 1 Eigen Faces 1 Face Detection 1 Face Shape Estimation 1 Point cloud 1 Poisson process 1 Shape estimation 1 Statistical shape detection 1
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Online availability
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Undetermined 2
Type of publication
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Article 2
Language
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English 1 Undetermined 1
Author
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Beg, Rizwan 1 Gupta, Kapil Kumar 1 Huffer, F.W. 1 Niranjan, Jitendra Kumar 1 Srivastava, A. 1 Su, J. 1
Published in...
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Computational Statistics & Data Analysis 1 International Journal of Computer Vision and Image Processing (IJCVIP) 1
Source
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RePEc 1 Other ZBW resources 1
Showing 1 - 2 of 2
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An Enhanced Approach of Face Detection using Bacteria Foraging Technique
Gupta, Kapil Kumar; Beg, Rizwan; Niranjan, Jitendra Kumar - In: International Journal of Computer Vision and Image … 6 (2016) 1, pp. 1-11
In this study, authors present an enhanced approach of face detection using bacteria foraging technique. This approach is based on chemotexis, reproduction and elimination and dispersal step. In this study the authors analysed face detection algorithm based on human skin color and fitting the...
Persistent link: https://www.econbiz.de/10012043811
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Cover Image
Detection, classification and estimation of individual shapes in 2D and 3D point clouds
Su, J.; Srivastava, A.; Huffer, F.W. - In: Computational Statistics & Data Analysis 58 (2013) C, pp. 227-241
The problems of detecting, classifying, and estimating shapes in point cloud data are important due to their general applicability in image analysis, computer vision, and graphics. They are challenging because the data is typically noisy, cluttered, and unordered. We study these problems using a...
Persistent link: https://www.econbiz.de/10010595089
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