Ensemble of Training Models for Road and Building Segmentation

Ryosuke Kamiya, Kyoya Sawada, K. Hotta
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引用次数: 1

Abstract

In this paper, we propose an object segmentation method in satellite images by the ensemble of models obtained through training process. To improve recognition accuracy, the ensemble of models obtained by different random seeds is used. Here we pay attention to the ensemble of models obtained through training process. In model ensemble, we should integrate the models with different opinions. Since the pixels with low probability such as boundary are often updated through training process, each model in training process has different probability for boundary regions, and the ensemble of those probability maps is effective for improving segmentation accuracy. Effectiveness of the ensemble of training models is demonstrated by experiments on building and road segmentation. Our proposed method improved approximately 4% in comparison with the best model selected by validation. Our method also achieved better accuracy than the standard ensemble of models.
道路和建筑物分割的训练模型集成
本文提出了一种基于训练模型集成的卫星图像目标分割方法。为了提高识别精度,采用不同随机种子获得的模型集成。这里我们关注的是通过训练过程得到的模型的集成。在模型集成中,我们应该把不同观点的模型整合起来。由于边界等概率较低的像素点在训练过程中经常更新,因此训练过程中的每个模型对边界区域的概率不同,这些概率图的集合对于提高分割精度是有效的。通过建筑物和道路分割的实验验证了训练模型集成的有效性。与验证选择的最佳模型相比,我们提出的方法提高了约4%。我们的方法也获得了比标准模型集成更好的精度。
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