基于改进Panoptic的遥感图像语义分割算法

Tong Zheng, L. Liu, Qimeng Chen, Zhongze Chen, Longji Yu, Z. Zhao
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引用次数: 0

摘要

图像的语义分割在利用遥感图像进行土地利用、建筑物提取、道路提取和车辆检测等方面发挥着重要作用。在将Panoptic FPN算法应用于遥感图像的场景中,我们发现该算法的解码器在特征提取方面不够鲁棒,不能对关键空间和通道进行加权增强,其编码器在单纯通过简单加法融合各级语义信息时丢失了大量高维语义特征。针对这两个问题,我们分别提出了基于注意机制和基于concat的特征融合机制的Se-Resnext编码器,并通过实验验证了方法的有效性。在遂昌数据集和posdam数据集上都提高了语义分割的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Segmentation Algorithm of Remote Sensing Images Based on Improved Panoptic
Semantic segmentation of images can play an important role in land use, building extraction, road extraction and vehicle detection using remote sensing images. In the scenario of applying Panoptic FPN algorithm for remote sensing images, we found that the decoder of this algorithm is not robust in feature extraction and cannot do weighted enhancement of key spaces and channels, and its encoder loses a lot of high-dimensional semantic features when simply fusing semantic information at all levels by simple addition. To address these two problems, we propose the Se-Resnext encoder based on the attention mechanism and the Concat-based feature fusion mechanism, respectively, and verify the effectiveness of the methods through experiments. The accuracy of semantic segmentation is improved in both suichang dataset and posdam dataset.
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