学位论文详细信息
Curvelet transform with adaptive tiling
Curvelet;Wavelet;Denoising;Compressed sensing;Texture
Al Marzouqi, Hasan ; AlRegib, Ghassan Electrical and Computer Engineering McClellan, James Fekri, Faramarz Yezzi, Anthony Peng, Zhigang ; AlRegib, Ghassan
University:Georgia Institute of Technology
Department:Electrical and Computer Engineering
关键词: Curvelet;    Wavelet;    Denoising;    Compressed sensing;    Texture;   
Others  :  https://smartech.gatech.edu/bitstream/1853/52961/1/ALMARZOUQI-DISSERTATION-2014.pdf
美国|英语
来源: SMARTech Repository
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【 摘 要 】

In this dissertation we address the problem of adapting frequency domain tiling using the curvelet transform as the basis algorithm.The optimal tiling, for a given class of images, is computed using denoising performance as the cost function. The major adaptations considered are: the number of scale decompositions, angular decompositions per scale/quadrant, and scale locations. A global optimization algorithm combining the three adaptations is proposed. Denoising performance of adaptive curvelets is tested on seismic and face data sets. The developed adaptation procedure is applied to a number of different application areas. Adaptive curvelets are used to solve the problem of sparse data recovery from subsampled measurements. Performance comparison with default curvelets demonstrates the effectiveness of the adaptation scheme. Adaptive curvelets are also used in the development of a novel image similarity index. The developed measure succeeds in retrieving correct matches from a variety of textured materials. Furthermore, we present an algorithm for classifying different types of seismic activities.

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