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Improvement of Recovering Shape from Endoscope Images Using RBF Neural Network

机译:利用RBF神经网络从内窥镜图像中恢复形状的改进

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The VBW (Vogel-Breuss-Weickert) model is proposed as a method to recover 3-D shape under point light source illumination and perspective projection. However, the VBW model recovers relative, not absolute, shape. Here, shape modification is introduced to recover the exact shape. Modification is applied to the output of the VBW model. First, a local brightest point is used to estimate the reflectance parameter from two images obtained with movement of the endoscope camera in depth. After the reflectance parameter is estimated, a sphere image is generated and used for Radial Basis Function Neural Network (RBF-NN) learning. The NN implements the shape modification. NN input is the gradient parameters produced by the VBW model for the generated sphere. NN output is the true gradient parameters for the true values of the generated sphere. Depth can then be recovered using the modified gradient parameters. Performance of the proposed approach is confirmed via computer simulation and real experiment.
机译:提出了VBW(Vogel-Breuss-Weickert)模型作为在点光源照明和透视投影中恢复3-D形的方法。但是,VBW模型恢复相对,不是绝对的形状。这里,引入形状修改以恢复精确的形状。修改应用于VBW模型的输出。首先,局部最亮点用于估计从内窥镜相机的移动深度移动的两个图像的反射率参数。在估计反射率参数之后,产生球形图像并用于径向基函数神经网络(RBF-NN)学习。 NN实现形状修改。 NN输入是由生成的球体的VBW模型产生的梯度参数。 NN输出是生成球体的真实值的真正梯度参数。然后可以使用修改的梯度参数恢复深度。通过计算机模拟和实验确认了所提出的方法的性能。

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