基于resnet的图像拼接质量评价与训练数据平衡

Xianglei Meng, Liang Han, C. Zuo, Pin Tao
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引用次数: 0

摘要

近几十年来,人们提出了许多图像拼接算法,我们也需要这些算法来评估图像拼接的质量。验证了基于神经网络的图像拼接质量评价的可能性。实验结果表明,该方法在不同的数据集上具有较强的可扩展性。在此基础上,分析了ResNet的训练数据平衡性和网络深度对算法的影响。10倍的数据量将使平均误差从2减小到1。平衡数据集可以显著降低平均误差。更深的ResNet34比ResNet18更好,ResNet18可以更快地训练,但需要更多的内存空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resnet-based quality evaluation of image mosaic and training data balance
Many image Mosaic algorithms have been pro-posed in recent decades, we also need the algorithm to evaluate the quality of image stitching. This paper verifies the possibility of image mosaic quality evaluation based on neural network. Experiment results show it is effective and has the strong scalability on different data sets. Furthermore, the influence of training data balance and the network deep of ResNet are analyzed. Ten times amount data will reduce the mean error from 2 to 1. Balance data set can reduce the mean error significantly. The deeper ResNet34 is better than ResNet18 which can train faster but needs more memory space.
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