Implicitly Rotation Equivariant Neural Networks

Naman Khetan, Tushar Arora, S. U. Rehman, Deepak K. Gupta
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Abstract

Convolutional Neural Networks (CNN) are inherently equivariant under translations, however, they do not have an equivalent embedded mechanism to handle other transformations such as rotations. The existing solutions require redesigning standard networks with filters mapped from combinations of predefined basis involving complex analytical functions. Such formulations are hard to implement as well as the imposed restrictions in the choice of basis can lead to model weights that are sub-optimal for the primary deep learning task (e.g. classification). We propose Implicitly Equivariant Network (IEN) which induces approximate equivariance in the different layers of a standard CNN by optimizing a multi-objective loss function. We show for ResNet models on Rot-MNIST and Rot-TinyImageNet that even with its simple formulation, IEN performs at par or even better than steerable networks. Also, IEN facilitates construction of heterogeneous filter groups allowing reduction in the number of channels in CNNs by a factor of over 30%. Further, we demonstrate that for the hard problem of visual object tracking, IEN outperforms the state-of-the-art rotation equivariant tracking method while providing faster inference speed.
隐式旋转等变神经网络
卷积神经网络(CNN)在平移下具有固有的等变性,然而,它们没有一个等效的嵌入式机制来处理其他转换,如旋转。现有的解决方案需要重新设计标准网络,从涉及复杂分析函数的预定义基组合映射过滤器。这样的公式很难实现,并且在选择基础方面施加的限制可能导致模型权重对于主要的深度学习任务(例如分类)来说不是最优的。本文提出了隐式等变网络(IEN),该网络通过优化多目标损失函数在标准CNN的不同层中诱导近似等变。我们展示了在Rot-MNIST和Rot-TinyImageNet上的ResNet模型,即使是简单的公式,IEN的表现也与可操纵网络相当,甚至更好。此外,IEN促进了异构过滤器组的构建,使cnn中的频道数量减少了30%以上。此外,我们证明了对于视觉目标跟踪的难题,IEN优于最先进的旋转等变跟踪方法,同时提供更快的推理速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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