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Image Semantic Segmentation Method Based on Deep Learning in UAV Aerial Remote Sensing Image

机译:无人机航空遥感图像中基于深度学习的图像语义分割方法

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摘要

The existing semantic segmentation methods have some shortcomings in feature extraction of remote sensing images. Therefore, an image semantic segmentation method based on deep learning in UAV aerial remote sensing images is proposed. First, original remote sensing images obtained by S185 multirotor UAV are divided into smaller image blocks through sliding window and normalized to provide high-quality image set for subsequent operations. Then, the symmetric encoding-decoding network structure is improved. Bottleneck layer with 1?×?1 convolution is introduced to build ISegNet network model, and pooling index and convolution are used to fuse semantic information and image features. The improved encoding-decoding network gradually strengthens the extraction of details and reduces the number of parameters. Finally, based on ISegNet network, five-classification problem is transformed into five binary classification problems for network training, so as to obtain high-precision image semantic segmentation results. The experimental analysis of the proposed method based on TensorFlow framework shows that the accuracy value reaches 0.901, and the F1 value is not less than 0.83. The overall segmentation effect is better than those of other comparison methods.
机译:现有的语义分割方法在遥感影像的特征提取方面存在一些不足。因此,该文提出一种基于深度学习的无人机航空遥感图像图像语义分割方法。首先,将S185多旋翼无人机获取的原始遥感影像通过滑动窗口分割成更小的图像块并进行归一化处理,为后续操作提供高质量的图像集;然后,改进了对称编解码网络结构;引入1?×?1卷积的瓶颈层构建ISegNet网络模型,并利用池化索引和卷积融合语义信息和图像特征。改进的编解码网络逐渐加强了细节的提取,减少了参数数量。最后,基于ISegNet网络,将五分类问题转化为五种二元分类问题进行网络训练,从而获得高精度的图像语义分割结果。基于TensorFlow框架对所提方法的实验分析表明,准确率值达到0.901,F1值不小于0.83。整体分割效果优于其他对比方法。

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