A method of vehicle license plate recognition utilizing Karhunen-Loeve(K-L) transform is provided. The transform is used to extract features from a mass of image templates, to describe high-dimensional images with low...A method of vehicle license plate recognition utilizing Karhunen-Loeve(K-L) transform is provided. The transform is used to extract features from a mass of image templates, to describe high-dimensional images with low-dimensional ones, and moreover, to implement data compression and play down complexity of the neural network. With the character to reduce eigenspace dimensionality of K-L transform and the ability to map data of BP network, the method does effectively in recognizing license plates.展开更多
核函数主元分析KPCA(kernel princ ipal component analysis)能够提取机械故障信号的非线性特征,可以应用于机械故障状态识别。但是KPCA是一种无监督的特征提取方法,不能利用故障信号中的类别信息。本文介绍了一种核最优K-L变换,它可以...核函数主元分析KPCA(kernel princ ipal component analysis)能够提取机械故障信号的非线性特征,可以应用于机械故障状态识别。但是KPCA是一种无监督的特征提取方法,不能利用故障信号中的类别信息。本文介绍了一种核最优K-L变换,它可以充分利用类别信息,它能够提取类平均向量和方差向量中的判别信息,使提取的特征分类效果更好。在齿轮故障诊断实验中,采用核最优K-L变换提取故障信号的非线性特征,实验结果表明核最优K-L变换相比KPCA故障识别结果更为理想。展开更多
文摘A method of vehicle license plate recognition utilizing Karhunen-Loeve(K-L) transform is provided. The transform is used to extract features from a mass of image templates, to describe high-dimensional images with low-dimensional ones, and moreover, to implement data compression and play down complexity of the neural network. With the character to reduce eigenspace dimensionality of K-L transform and the ability to map data of BP network, the method does effectively in recognizing license plates.
文摘核函数主元分析KPCA(kernel princ ipal component analysis)能够提取机械故障信号的非线性特征,可以应用于机械故障状态识别。但是KPCA是一种无监督的特征提取方法,不能利用故障信号中的类别信息。本文介绍了一种核最优K-L变换,它可以充分利用类别信息,它能够提取类平均向量和方差向量中的判别信息,使提取的特征分类效果更好。在齿轮故障诊断实验中,采用核最优K-L变换提取故障信号的非线性特征,实验结果表明核最优K-L变换相比KPCA故障识别结果更为理想。