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Learning Steerable Filters for Rotation Equivariant CNNs

机译:学习旋转等距CNN的可控滤波器

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In many machine learning tasks it is desirable that a model's prediction transforms in an equivariant way under transformations of its input. Convolutional neural networks (CNNs) implement translational equivariance by construction; for other transformations, however, they are compelled to learn the proper mapping. In this work, we develop Steerable Filter CNNs (SFCNNs) which achieve joint equivariance under translations and rotations by design. The proposed architecture employs steerable filters to efficiently compute orientation dependent responses for many orientations without suffering interpolation artifacts from filter rotation. We utilize group convolutions which guarantee an equivariant mapping. In addition, we generalize He's weight initialization scheme to filters which are defined as a linear combination of a system of atomic filters. Numerical experiments show a substantial enhancement of the sample complexity with a growing number of sampled filter orientations and confirm that the network generalizes learned patterns over orientations. The proposed approach achieves state-of-the-art on the rotated MNIST benchmark and on the ISBI 2012 2D EM segmentation challenge.
机译:在许多机器学习任务中,希望模型的预测在其输入的变换下以等变的方式变换。卷积神经网络(CNN)通过构造实现平移等方差;但是,对于其他转换,他们不得不学习正确的映射。在这项工作中,我们开发了可控滤波器CNN(SFCNN),通过设计可实现平移和旋转条件下的联合等方差。所提出的体系结构采用可操纵的滤波器来有效地计算许多取向的依赖于取向的响应,而不会因滤波器旋转而遭受插值伪像。我们利用群卷积来保证等变映射。此外,我们将He的权重初始化方案推广到定义为原子过滤器系统的线性组合的过滤器。数值实验表明,随着采样滤波器方向的增加,样本的复杂性得到了显着提高,并证实了网络将学习的模式推广到方向上。拟议的方法在旋转的MNIST基准和ISBI 2012 2D EM分割挑战方面达到了最新水平。

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