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109201252fractal
包括Koch曲线、Levy 曲线、分形树、Sierpinski三角形,并附有详细的注解(leaf_by_recursion,Sierpinski三角,spirall,recurs_polygon3,recurs_star7等等)
- 2009-03-30 12:23:15下载
- 积分:1
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Chebeshev
切比雪夫插值(利用切比雪夫点进行多项式插值),对连续函数进行逼近。(Chebyshev interpolation (using Chebyshev polynomial interpolation points), for continuous function approximation)
- 2009-05-25 08:53:57下载
- 积分:1
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A-High-Dynamic-Range-Based-Approach-for-the
This program for High dynamic rannge output image selection or conversion
- 2014-09-01 21:03:19下载
- 积分:1
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Bulk_Perfect
simulation of DC_DC_Bulk_converter by matlab simulink.
- 2012-11-26 05:38:48下载
- 积分:1
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moshishibie
贝叶斯分类估计和最大似然估计的matlab编程(it is used to make the bayesis guji and the mle.it is very convenient for homework)
- 2013-11-08 14:46:17下载
- 积分:1
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moravecoperator
Matlab编写的特征点提取算子
用于影像匹配等(Matlab prepared Feature Extraction operator for image matching, etc.)
- 2020-12-10 10:59:18下载
- 积分:1
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Matlab
一个关于matlab工程应用的PPT,希望能对用matlab进行工程分析的人有帮助!(Matlab project on the application of PPT, with the hope that it can carry out engineering analysis matlab help people!)
- 2008-02-28 16:38:19下载
- 积分:1
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PSK
Matlab scrip. PSK Modulation
- 2011-07-02 08:13:08下载
- 积分:1
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Tau_matlab
tauP变换的matlab程序,也就是线性拉东变换的matlab程序(tauP transform matlab program, which is linear Radon transform matlab program)
- 2021-03-30 20:09:09下载
- 积分:1
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FCM+Knn
用K均值算法和C模糊算法对sonar数据和iris数据进行分类。
K均值算法是一种很常用的聚类算法,其基本思想是,通过迭代寻找K个聚类的一种划分方法,使得用这K个聚类的均值来代表各类样本是所得到的的总体误差最小。
模糊C均值(FCM)算法在K均值算法的基础上,用模糊子集代替确定子集,从而得到模糊的分类结果,即分类结果的模糊化。(Sonar data and iris data are classified by means of K mean algorithm and C fuzzy algorithm.
The K mean algorithm is a very common clustering algorithm. Its basic idea is to find a partition method of K clustering by iteration, so that the average error of the mean of the K clustering is minimized.
The fuzzy C mean (FCM) algorithm is based on the K mean algorithm. The fuzzy subset is replaced by the fuzzy subset, thus the fuzzy classification result is obtained, that is, the classification result is fuzzed.)
- 2020-11-06 17:59:50下载
- 积分:1