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Robust Target Localization and Segmentation: Application of Kernel-based Statistical Methods to Computer Vision Omar Arif
Robust Target Localization and Segmentation: Application of Kernel-based Statistical Methods to Computer Vision
Omar Arif
This work aims to contribute to the area of visual tracking, which is the process of identifying an object of interest through a sequence of successive images. The thesis explores kernel-based statistical methods. Two algorithms are developed for visual tracking that are robust to noise and occlusions. In the first algorithm, a kernel PCA-based eigenspace representation is used. The de-noising and clustering capabilities of the kernel PCA procedure lead to a robust algorithm. In the second method, a robust density comparison framework is developed that is applied to visual tracking, where an object is tracked by minimizing the distance between a model distribution and given candidate distributions. The superior performance of kernel-based algorithms comes at a price of increased storage and computational requirements. A novel method is developed that takes advantage of the universal approximation capabilities of generalized radial basis function neural networks to reduce the computational and storage requirements for kernel-based methods.
| Media | Books Paperback Book (Book with soft cover and glued back) |
| Released | September 12, 2010 |
| ISBN13 | 9783843350389 |
| Publishers | LAP LAMBERT Academic Publishing |
| Pages | 116 |
| Dimensions | 226 × 7 × 150 mm · 191 g |
| Language | German |
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