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专辑
纸质出版:2012
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流形学习的目的是发现非线性数据的内在结构
可用于非线性降维。广义回归网络是人工神经网络的一种
可用于非线性回归。基于流形学习和非线性回归
提出了用于解决头部姿态估计的ManiNLR方法。该方法首先用流形学习对图像数据进行降维
然后用非线性回归的方法将数据映射到线性可分空间
利用非线性回归的结果对人脸的头部姿态进行估计。实验结果表明
ManiNLR算法能够较好地估计图像中的头部姿态
并具有较快的速度和较高的鲁棒性。
Manifold learning attempts can be used to obtain the intrinsic structure of the non-linear data
which can be used in non-linea dimensionality reduction. The general regression neural network (GRNN) is a kind of artificial neural network
which can be used in non-linear regression. In this paper
the ManiNLR method
which is based on manifold learning and nonlinear regression
is proposed for head pose estimation. ManiNLR performs manifold learning on the digital image
and then uses GRNN to map the data into the linear separable space
finally using the result to estimate the head pose. Experiments show that ManiNLR can better estimate the head pose in digital images
and has the advantages of high speed and high robustness.
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