基于编码器-解码器的神经网络视角估计

Yutong Wang, Qi Zhang, Joongkyu Kim, Huifang Li
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引用次数: 0

摘要

在图像处理领域,我们倾向于使用辅助信息来辅助网络进行深度分析,而透视值就是我们经常使用的辅助信息之一。它能有效地解决透视失真问题。但是大多数数据集无法提供图像的视角值,因此我们致力于构建一个可以从输入图像中提取视角值的网络,称为视角估计网络(PENet)。在本文中,我们提出了一种能够准确预测透视值的创新训练方法。我们在2010年世博会的数据集上对PENet进行了训练,测试结果表明我们的方法是非常有效的。
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Encoder-Decoder based Neural Network for Perspective Estimation
In the images processing field, we tend to use auxiliary information to assist the network for deep analysis, and perspective value is one of the auxiliary information that we frequently use. It can effectively solve the issue of perspective distortion. But most datasets cannot provide the perspective value of the image, so we devote to building a network, named perspective estimation network (PENet), that can extract the perspective value from the input image. In this paper, we propose an innovative training method that can accurately predict the perspective value. We trained the PENet on the WorldExpo’10 dataset and the test results show that our method is highly effective.
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