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IEEEXplore-4.pdf
Mutual Information Feature Selection
- 2009-04-17 12:27:10下载
- 积分:1
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Matlabfilter
说明: 使用Matlab实现了FIR与IIR滤波器,并对其进行了仿真对比(The use of Matlab to achieve a FIR and IIR filters, and its Simulation)
- 2008-11-06 10:10:58下载
- 积分:1
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giftExampleFusionQmfWavelet1
一种新的像素级多聚焦图像融合算法,主要用于遥感图像的融合(A new pixel-level multi-focus image fusion algorithm, mainly used for remote sensing image fusion)
- 2011-04-22 11:34:23下载
- 积分:1
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naive-bayes-classifier
程序实现了naive bayes classifier, 并附有对美国参议院根据投票情况来判断议员属于民主党还是共和党的例子。(Program achieved a naive bayes classifier, along with the U.S. Senate voting to determine under Democrat and Republican members belonging examples.)
- 2013-08-04 02:31:08下载
- 积分:1
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FDD
利用FDD进行模态分析 得到输入激励的后的频率(FDD modal iditification)
- 2020-10-28 17:39:57下载
- 积分:1
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qr_code
实现二维码的生成,主要是基于Zxing二维码(generate Qr_code)
- 2016-01-05 01:24:33下载
- 积分:1
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petri
说明: 这是基于MATLAB中的stateflow的一个简单的单水箱状态机(Single Water Tank State Machine)
- 2019-04-02 20:56:45下载
- 积分:1
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119128635OMP
说明: 压缩感知(Compressed sensing),也被称为压缩采样(Compressive sampling),稀疏采样(Sparse sampling),压缩传感 [1] 。它作为一个新的采样理论,它通过开发信号的稀疏特性,在远小于Nyquist 采样率的条件下,用随机采样获取信号的离散样本,然后通过非线性重建算法完美的重建信号 [1] 。压缩感知理论一经提出,就引起学术界和工业界的广泛关注。(Compressed sensing (Compressed sensing), also known as compression sampling (Compressive from), Sparse sampling (Sparse from), Compressed sensing [1].As a new sampling theory, it develops the sparse characteristics of signals, obtains the discrete samples of signals with random sampling under the condition that the sampling rate is much lower than Nyquist sampling, and then perfectly reconstructs the signals through the nonlinear reconstruction algorithm [1].Once the theory of compressed sensing was put forward, it attracted extensive attention from academia and industry.)
- 2020-12-09 07:29:19下载
- 积分:1
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pattern-and-classification(Duda)
Duda《模式分类》Matlab源代码和答案(Duda " pattern classification" Matlab source code and answers)
- 2011-07-21 16:36:53下载
- 积分:1
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pls_t2_sep
用于在pls中来提取t2和spe的数值分析(apply in pls to get t2)
- 2013-11-27 18:54:42下载
- 积分:1