A differential excitation based rotational invariance for convolutional neural networks

Haribabu Kandi, Deepak Mishra, G. R. S. Subrahmanyam
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引用次数: 1

Abstract

Deep Learning (DL) methods extract complex set of features using architectures containing hierarchical set of layers. The features so learned have high discriminative power and thus represents the input to the network in the most efficient manner. Convolutional Neural Networks (CNN) are one of the deep learning architectures, extracts structural features with little invariance to smaller translational, scaling and other forms of distortions. In this paper, the learning capabilities of CNN's are explored towards providing improvement in rotational invariance to its architecture. We propose a new CNN architecture with an additional layer formed by differential excitation against distance for the improvement of rotational invariance and is called as RICNN. Moreover, we show that the proposed method is giving superior performance towards invariance to rotations against the original CNN architecture (training samples with different orientations are not considered) without disturbing the invariance to smaller translational, scaling and other forms of distortions. Different profiles like training time, testing time and accuracies are evaluated at different percentages of training data for comparing the performance of the proposed configuration with original configuration.
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基于微分激励的卷积神经网络旋转不变性
深度学习(DL)方法使用包含分层层集的体系结构提取复杂的特征集。这样学习到的特征具有很高的判别能力,从而以最有效的方式表示网络的输入。卷积神经网络(Convolutional Neural Networks, CNN)是一种深度学习架构,它提取的结构特征对较小的平移、缩放和其他形式的扭曲具有很小的不变性。本文探讨了CNN的学习能力,以改善其结构的旋转不变性。我们提出了一种新的CNN结构,该结构通过对距离的微分激励形成附加层来改善旋转不变性,称为RICNN。此外,我们表明,所提出的方法在针对原始CNN架构(不考虑具有不同方向的训练样本)的旋转不变性方面具有优越的性能,而不会干扰较小的平移,缩放和其他形式的扭曲的不变性。在不同的训练数据百分比下评估不同的配置,如训练时间、测试时间和准确性,以比较建议配置与原始配置的性能。
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