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An Enhanced Deep Convolutional Encoder-Decoder Network for Road Segmentation on Aerial Imagery

机译:用于空中图像的道路分割增强深卷积编码器 - 解码器网络

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Object classification from images is among the many practical examples where deep learning algorithms have successfully been applied. In this paper, we present an improved deep convolutional encoder-decoder network (DCED) for segmenting road objects from aerial images. Several aspects of the proposed method are enhanced, incl. incorporation of ELU (exponential linear unit)-as opposed to ReLU (rectified linear unit) that typically outperforms ELU in most object classification cases; amplification of datasets by adding incrementally-rotated images with eight different angles in the training corpus (this eliminates the limitation that the number of training aerial images is usually limited), thus the number of training datasets is increased by eight times; and lastly, adoption of landscape metrics to further improve the overall quality of results by removing false road objects. The most recent DCED approach for object segmentation, namely SegNet, is used as one of the benchmarks in evaluating our method. The experiments were conducted on a well-known aerial imagery, Massachusetts roads dataset (Mass. Roads), which is publicly available. The results showed that our method outperforms all of the baselines in terms of precision, recall, and F1 scores.
机译:来自图像的对象分类是已成功应用深度学习算法的许多实际示例之一。在本文中,我们提出了一种改进的深度卷积编码器解码器网络(DCED),用于从航空图像分割道路对象。提高了所提出的方法的若干方面,包括增强。 INTU(指数线性单元)的掺入 - 在大多数物体分类情况下通常优于ELU的Relu(整流线性单元);通过在训练语料库中添加具有八个不同角度的渐进旋转图像来放大数据集(这消除了训练空中图像的数量通常限制的限制),因此训练数据集的数量增加了八次;最后,采用景观指标来进一步提高伪劣道路物体的整体质量。最近的对象分割方法即SEGNET,被用作评估我们方法的基准之一。该实验是在公知的空中图像上进行的,马萨诸塞州道路数据集(质量。道路),该公开可用。结果表明,我们的方法在精确,召回和F1分数方面优于所有基线。

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