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Polar Coordinate Convolutional Neural Network: From Rotation-Invariance to Translation-Invariance

机译:极坐标卷积神经网络:从旋转不变到平移不变

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Convolutional neural network (CNN) has been famous for its translation-invariant ability in feature learning. In order to further encounter rotation-invariant, data augmentation by rotation of training samples should be considered for multiple-branch based structure using maximum operator or average operator. In this paper, a novel Polar Coordinate CNN (PC-CNN) is proposed for rotation-invariant feature learning. Specifically, training samples are first input to a polar coordinate transform layer by which rotation-invariance is converted into translation-invariance. Consequently, rotation-invariance problem in feature learning can be easily encountered by traditional CNNs without the multiple-branch structure. Experimental results over two benchmark data sets demonstrate that the proposed polar transformation is very effective to encounter rotation-invariant into traditional CNNs and outperforms several state-of-the-art rotation-invariant CNNs.
机译:卷积神经网络(CNN)以其在特征学习中的翻译不变能力而闻名。为了进一步遇到旋转不变性,对于使用多运算符或平均运算符的基于多分支的结构,应考虑通过训练样本旋转进行的数据增强。本文提出了一种新颖的极坐标CNN(PC-CNN)用于旋转不变特征学习。具体地,首先将训练样本输入到极坐标变换层,通过该极坐标变换层将旋转不变性转换为平移不变性。因此,无需多分支结构的传统CNN可以轻松解决特征学习中的旋转不变性问题。在两个基准数据集上的实验结果表明,提出的极坐标变换非常有效地将旋转不变式转换为传统的CNN,并且优于几种最新的旋转不变式CNN。

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