基于CRF模型的空域平滑航空图像语义分割

S. Hussein, Khawla H. Ali
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引用次数: 1

摘要

本文研究了一种用于航空图像高分辨率语义分割的深度学习方法。U-net架构承诺从基本思想中进行端到端学习,使手工特征设计被抛弃。然而,问题是在更大的图像区域逐渐收集信息,从不同的像素中分离捐赠。为了解决这一问题,提出了一种基于U-net的训练策略,该策略包括两个部分:收缩和扩展,以分割前景和背景像素。此外,还利用条件随机场(CRF)的显著性来提高语义分割的准确性。在包含土地、建筑、道路、植被、水、未标记六种常见资源的航拍图像(迪拜卫星图像)数据集上对所提出的算法进行了语义分割评估。实验结果表明,该方法的准确率为0.99,损失函数为0.58,优于其他算法。
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Enhanced Semantic Segmentation of Aerial images with Spatial Smoothness Using CRF Model
This paper addresses a deep learning method for high-resolution semantic segmentation in aerial images. U-net architecture promises end-to-end learning from basic ideas, making hand feature design deserted. However, the problem is gradually collecting information over larger image regions, making separating donations from different pixels. To solve this problem, the proposed training strategy is based on U-net, which contains two parts: contraction and expansion to segment foreground and background pixels. In addition, the significance of conditional random field (CRF) is applied to improve the accuracy of semantic segmentation. The proposed algorithm was evaluated on the Semantic segmentation of aerial imagery (Satellite images of Dubai) dataset, containing six common resources Land, Building, Road, Vegetation, Water, Unlabeled. The experimental findings reveal that the suggested approach outperforms other algorithms by achieving 0.99 accuracies and loss function 0.58.
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