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Modeling Camera Image Formation Using a Feedforward Neural Network

机译:使用前馈神经网络建模相机图像形成

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One fundamental problem in computer vision and image processing is modeling the image formation of a camera, i.e., mapping a point in three-dimensional space to its projected position on the camera’s image plane. If the relationship between the space and the image plane is assumed to be linear, the relationship can be expressed in terms of a transfor-mation matrix and the matrix is often identified by regression. In this paper, we show that the space-to-image relation-ship in a camera can be modeled by a simple neural network. Unlike most other cases employing neural networks, the structure of the network is optimized so as for each link between neurons to have a physical meaning. This makes it possible to effectively initialize link weights and quickly train the network.
机译:计算机视觉和图像处理中的一个基本问题是对相机的图像形成进行建模,即将三维空间中的点映射到其在相机图像平面上的投影位置。如果假定空间和图像平面之间的关系是线性的,则可以用变换矩阵表示该关系,并且该矩阵通常通过回归来标识。在本文中,我们表明可以通过简单的神经网络对相机中的空间与图像的关系进行建模。与大多数其他采用神经网络的情况不同,对神经网络的结构进行了优化,以使神经元之间的每个链接都具有物理意义。这使得有效初始化链接权重并快速训练网络成为可能。

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