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ACNe: Attentive Context Normalization for Robust Permutation-Equivariant Learning

机译:ACNe:鲁棒置换等变学习的注意上下文规范化

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Many problems in computer vision require dealing with sparse, unordered data in the form of point clouds. Permutation-equivariant networks have become a popular solution – they operate on individual data points with simple perceptrons and extract contextual information with global pooling. This can be achieved with a simple normalization of the feature maps, a global operation that is unaffected by the order. In this paper, we propose Attentive Context Normalization (ACN), a simple yet effective technique to build permutation-equivariant networks robust to outliers. Specifically, we show how to normalize the feature maps with weights that are estimated within the network, excluding outliers from this normalization. We use this mechanism to leverage two types of attention: local and global – by combining them, our method is able to find the essential data points in high-dimensional space in order to solve a given task. We demonstrate through extensive experiments that our approach, which we call Attentive Context Networks (ACNe), provides a significant leap in performance compared to the state-of-the-art on camera pose estimation, robust fitting, and point cloud classification under noise and outliers. Source code: https://github.com/vcg-uvic/acne.
机译:计算机视觉中的许多问题都需要以点云的形式处理稀疏,无序的数据。置换等变网络已成为一种流行的解决方案–它们使用简单的感知器在单个数据点上进行操作,并通过全局池提取上下文信息。这可以通过特征图的简单归一化来实现,特征图是不受顺序影响的全局操作。在本文中,我们提出了注意力上下文规范化(ACN),这是一种简单但有效的技术,可构建对异常值具有鲁棒性的置换等价网络。具体来说,我们展示了如何使用网络中估计的权重对特征图进行归一化,从而从此归一化中排除异常值。我们使用这种机制来利用两种注意力:局部和全局-通过将它们结合起来,我们的方法能够找到高维空间中的基本数据点,以解决给定的任务。我们通过广泛的实验证明,与最新的相机姿态估计,鲁棒拟合以及在噪声和噪声下的点云分类相比,我们的方法(称为注意力上下文网络(ACNe))在性能上有了重大飞跃。离群值。源代码:https://github.com/vcg-uvic/acne。

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