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Discrete_Cosine_code

于 2008-05-14 发布 文件大小:3KB
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代码说明:

  用matlab实现的离散余弦编码,主要通过离散余弦编码的原理,用matlab实现的源代码。(Using matlab realize the discrete cosine coding, discrete cosine, mainly through the principle of encoding, using matlab realize the source code.)

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