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多点收缩混沌优化方法及全局收敛性证明
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作者 刘勇 陆军 +1 位作者 徐裕生 李阳 《纯粹数学与应用数学》 CSCD 2009年第3期491-496,共6页
针对目前混沌优化算法在选取局部搜索空间时的盲目性,提出一种具有自适应调节局部搜索空间能力的多点收缩混沌优化方法.该方法在当前搜索空间搜索时保留多个较好搜索点,之后利用这些点来确定之后的局部搜索空间,以达到对不同的函数和当... 针对目前混沌优化算法在选取局部搜索空间时的盲目性,提出一种具有自适应调节局部搜索空间能力的多点收缩混沌优化方法.该方法在当前搜索空间搜索时保留多个较好搜索点,之后利用这些点来确定之后的局部搜索空间,以达到对不同的函数和当前搜索空间内已进行搜索次数的自适应效果.给出了该算法以概率1收敛的证明.仿真结果表明该算法有效的提高了混沌优化算法的性能,改善了混沌算法的实用性. 展开更多
关键词 混沌优化 多点收缩混沌优化算法 全局收敛性 概率1收敛
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Denoising of an Image Using Discrete Stationary Wavelet Transform and Various Thresholding Techniques 被引量:8
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作者 Abdullah Al Jumah 《Journal of Signal and Information Processing》 2013年第1期33-41,共9页
Image denoising has remained a fundamental problem in the field of image processing. With Wavelet transforms, various algorithms for denoising in wavelet domain were introduced. Wavelets gave a superior performance in... Image denoising has remained a fundamental problem in the field of image processing. With Wavelet transforms, various algorithms for denoising in wavelet domain were introduced. Wavelets gave a superior performance in image denoising due to its properties such as multi-resolution. The problem of estimating an image that is corrupted by Additive White Gaussian Noise has been of interest for practical and theoretical reasons. Non-linear methods especially those based on wavelets have become popular due to its advantages over linear methods. Here I applied non-linear thresholding techniques in wavelet domain such as hard and soft thresholding, wavelet shrinkages such as Visu-shrink (non-adaptive) and SURE, Bayes and Normal Shrink (adaptive), using Discrete Stationary Wavelet Transform (DSWT) for different wavelets, at different levels, to denoise an image and determine the best one out of them. Performance of denoising algorithm is measured using quantitative performance measures such as Signal-to-Noise Ratio (SNR) and Mean Square Error (MSE) for various thresholding techniques. 展开更多
关键词 WAVELET Discrete WAVELET TRANSFORM WAVELET Packet TRANSFORM STATIONARY WAVELET TRANSFORM THRESHOLDING Visu shrink sure shrink Normal shrink Mean Square Error Peak SIGNAL-TO-NOISE Ratio
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