基于语义地图的遥感图像语义变化检测多任务神经网络

Jiang Long;Sicong Liu;Mengmeng Li
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引用次数: 0

摘要

语义变化检测(SCD)旨在从多时相遥感图像中识别潜在的地球表面变化,包括其位置和类别。然而,现有SCD方法的检测不足和伪变化问题限制了它们在不同地面场景中的有效性。为了解决这些问题,提出了一个基于多任务架构的语义地图引导网络,即SMGNet,旨在从双时相高分辨率遥感图像中识别潜在的土地覆盖变化。首先开发了一种鲁棒特征提取器,在保留细粒度空间细节的同时提取多尺度上下文信息,从而增强了不规则形状和大尺寸复杂物体的语义表示。为了解决检测不足的问题,我们使用语义地图编码器模块将来自前时态土地覆盖地图的历史语义信息集成到模型中。开发了基于贝叶斯理论的语义融合模块,突出突出变化信息,从而减少了光谱变化的同一地物引起的伪变化。在公开的SCD数据集上获得的实验结果表明,该方法在识别各种语义变化方面是有效的。结果表明,在高分辨率scd (HRSCD)数据集上,SMGNet的分离kappa (SeK)和$F1$ -score ($F1_{\text {scd}}$)指标的检测精度分别比现有的9种方法高14.81% ~ 41.28%和8.45% ~ 40.31%。该方法有效地缓解了光谱和时间差异引起的伪变化,能够准确地检测出形状不规则、尺寸较大的伪变化目标。检测结果显示类间紧密度高,边界清晰。代码和数据可在https://github.com/long123524/SMGNet上获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SMGNet: A Semantic Map-Guided Multitask Neural Network for Remote Sensing Image Semantic Change Detection
Semantic change detection (SCD) aims to identify potential Earth surface changes, including their location and class, from multitemporal remote sensing images. However, the underdetection and pseudochange issues in existing SCD methods severally limit their effectiveness in diverse ground scenarios. To address these issues, a semantic map-guided network, namely, SMGNet, is proposed based on a multitask architecture designed to identify potential land-cover changes from bitemporal high-resolution remote sensing images. A robust feature extractor is first developed to extract multiscale contextual information while retaining fine-grained spatial details, thus enhancing the semantic representation of complex objects with irregular shapes and large sizes. To address the issue of underdetection, we integrate historical semantic information derived from pretemporal land-cover maps into the model using a semantic map encoder module. A semantic fusion module based on Bayesian theory is developed to highlight salient changed information, thus reducing pseudochanges caused by the same ground objects with spectra variations. Experimental results obtained in a public SCD dataset demonstrate the effectiveness of the proposed method in identifying various semantic changes. Results indicate that the proposed SMGNet achieved the highest detection accuracy, exceeding nine existing methods by 14.81%–41.28% and 8.45%–40.31% in terms of separated kappa (SeK) and $F1$ -score ( $F1_{\text {scd}}$ ) metrics on the high-resolution SCD (HRSCD) dataset, respectively. The proposed method effectively alleviated pseudochanges induced by spectra and temporal differences, and accurately detecting these changed objects with irregular shapes and large sizes. The detected results exhibited high interclass compactness and well-defined boundaries. Code and data are available at https://github.com/long123524/SMGNet
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