混合cnn:高分辨率球面图像的旋转等变框架

Wei Yu, Daren Zha, Nan Mu, Tianshu Fu
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摘要

随着虚拟现实、增强现实和自主机器人的普及,它们产生的高分辨率球面图像使标准卷积神经网络(cnn)变得不平凡,卷积神经网络在透视图像上已经被证明是强大的。在球面图像上使用cnn的经典解决方案是将球面图像投影到平面上,然后使用传统的cnn学习平面图像。但是球面图像到平面图像的投影所产生的畸变使基于投影的模型失效。此外,这些模型对旋转的鲁棒性较差,而旋转是球面图像的基本变换。Cohen等人[1]最近提出的另一种基于球面谐波的解决方案是旋转等变,但由于计算成本昂贵,无法处理高分辨率球面图像。为了处理高分辨率球面图像,我们提出了混合cnn。我们的框架具有计算效率和旋转等变性,文中定义了两种卷积操作。在两个分类任务中,我们将我们的方法与几个基线模型进行了比较。实验结果证明了混合cnn的计算效率和旋转等效性。
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Hybrid CNNs: A Rotation Equivariant Framework for High Resolution Spherical Images
With the prevalence of virtual reality, augmented reality and autonomous robots, the high resolution spherical images they produced make the standard convolutional neural networks (CNNs), which have been proven powerful on perspective images, non-trivial. The classic solution to utilize CNNs on spherical images is to project the spherical images onto plane and learning the planar images using conventional CNNs. But the distortion generated by the projection of spherical images to planar images invalidates the projection based models. Besides, these models are not robust to rotations which are the basic transformation of spherical images. Another type of solution based on spherical harmonics recently proposed by Cohen et al. [1] is rotation equivariant, but can't handle high resolution spherical images with its expensive computational cost. To process high resolution spherical images, we proposed the Hybrid CNNs. Our framework is both computationally efficient and rotation equivariant with two kinds of convolution operations defined in this paper. We compared our method with several baseline models in two classification tasks. The experimental results demonstrate the computational efficiency and rotation equivariance of the Hybrid CNNs.
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