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Rotation-Invariant Restricted Boltzmann Machine Using Shared Gradient Filters

机译:使用共享梯度滤波器的旋转不变受限玻尔兹曼机

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Finding suitable features has been an essential problem in computer vision. We focus on Restricted Boltzmann Machines (RBMs), which, despite their versatility, cannot accommodate transformations that may occur in the scene. As a result, several approaches have been proposed that consider a set of transformations, which are used to either augment the training set or transform the actual learned filters. In this paper, we propose the Explicit Rotation-Invariant Restricted Boltzmann Machine, which exploits prior information coming from the dominant orientation of images. Our model extends the standard RBM, by adding a suitable number of weight matrices, associated with each dominant gradient. We show that our approach is able to learn rotation-invariant features, comparing it with the classic formulation of RBM on the MNIST benchmark dataset. Overall, requiring less hidden units, our method learns compact features, which are robust to rotations.
机译:在计算机视觉中,找到合适的功能一直是一个必不可少的问题。我们专注于受限玻尔兹曼机(RBM),尽管它们具有多种功能,但不能适应场景中可能发生的变换。结果,已经提出了考虑一组转换的几种方法,这些方法用于增加训练集或转换实际的学习滤波器。在本文中,我们提出了显式旋转不变受限玻尔兹曼机,该机利用了来自图像主导方向的先验信息。我们的模型通过添加与每个主要梯度相关的适当数量的权重矩阵,扩展了标准RBM。我们证明了我们的方法能够学习旋转不变特征,并将其与MNIST基准数据集上的RBM的经典公式进行比较。总体而言,我们的方法需要较少的隐藏单元,因此可以学习紧凑的功能,这些功能对旋转具有鲁棒性。

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