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Spatial Transformations in Deep Neural Networks

机译:深神经网络中的空间变换

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摘要

Convolutional Neural Networks (CNNs) have brought us the exceptionally significant improvement in the performance of the variety of visual tasks, such as object classification, semantic segmentation or linear regression. However, these powerful neural models suffer from the lack of spatial invariance. In this paper, we introduce the end-to-end system that is able to learn such invariance including in-plane and out-of-plane rotations. We performed extensive experiments on variations of widely known MNIST dataset, which consist of images subjected to deformations. Our comparative results show that we can successfully improve the classification score by implementing so-called Spatial Transformer module.
机译:卷积神经网络(CNNS)带来了对各种视觉任务的性能的异常显着改善,例如对象分类,语义分割或线性回归。然而,这些强大的神经模型缺乏空间不变性。在本文中,我们介绍了能够学习这种不变性的端到端系统,包括平面内和平面外旋转。我们对广泛已知的MNIST数据集进行了广泛的实验,该数据集由经过变形的图像组成。我们的比较结果表明,我们可以通过实施所谓的空间变压器模块来成功提高分类评分。

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