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单特征MNIST库手写数字识别实现(matlab)

上传者: navylq | 上传时间:2023/9/19 9:22:55 | 文件大小:342KB | 文件类型:rar
单特征MNIST库手写数字识别实现(matlab)
单特征MNIST库手写数字识别实现(matlab),采用粗网格特征进行学习识别,首先提取MNIST数据库60000个训练样本手进行特征提取,然后对10000个测试样本进行测试,matlab实现

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评论信息

  • 小小买卖:
    值得借鉴,但是就是没有bmp图像数据2016-06-02
  • coffee_coffee_coffee:
    非常感谢分享,学习代码了。2015-10-02
  • meadow:
    不错,很完整2015-07-31
  • lostar_:
    看不懂!!!!2015-07-10
  • qq_23989971:
    没看明白这算是用什么方法实现的svm贝叶斯还是线性分类器?还不太理解原理2015-03-20

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