具有尺度可控制滤波器的尺度等变cnn

Hanieh Naderi, Leili Goli, S. Kasaei
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引用次数: 7

摘要

卷积神经网络(cnn)尽管是最成功的图像分类方法之一,但由于其结构限制,对大多数几何变换(旋转、各向同性缩放)不具有鲁棒性。近年来,为了实现cnn的尺度不变性,提出了尺度可控制滤波器。虽然这些滤波器提高了网络在尺度图像分类任务中的性能,但它们不能保持整个网络的尺度信息。本文对这一问题进行了探讨。首先,利用尺度可调滤波器构建CNN。然后,通过在每一层添加特征映射来获得尺度等变网络,从而在整个网络中保留尺度相关的特征。最后,通过将代价函数定义为交叉熵,对该解进行评估,并更新模型参数。结果表明,在fmist -scale数据集上运行时,该方法比其他可比较的尺度等变性和尺度不变性方法的性能提高了约2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scale Equivariant CNNs with Scale Steerable Filters
Convolution Neural Networks (CNNs), despite being one of the most successful image classification methods, are not robust to most geometric transformations (rotation, isotropic scaling) because of their structural constraints. Recently, scale steerable filters have been proposed to allow scale invariance in CNNs. Although these filters enhance the network performance in scaled image classification tasks, they cannot maintain the scale information across the network. In this paper, this problem is addressed. First, a CNN is built with the usage of scale steerable filters. Then, a scale equivariat network is acquired by adding a feature map to each layer so that the scale-related features are retained across the network. At last, by defining the cost function as the cross entropy, this solution is evaluated and the model parameters are updated. The results show that it improves the perfromance about 2% over other comparable methods of scale equivariance and scale invariance, when run on the FMNIST-scale dataset.
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