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    基于多尺度差异敏感孪生神经网络的卫星影像建筑物变化检测

    Detecting building changes from satellite images based on a multi-scale difference-sensitive Siamese neural network

    • 摘要: 基于遥感数据检测输电线路走廊内的建筑物变化(如新增违建和施工区等),可及时预警线房安全距离不足、大型机械碰线等外力破坏风险,是保障供电安全的核心技术。然而,基于卫星影像的深度学习变化检测中,建筑物目标存在特征模糊、类内尺度差异等问题,加之拍摄角度差异、辐射条件变化等复杂因素影响,现有模型精度不足。因此,该文提出了多尺度特征差异敏感的孪生神经网络(multi-scale difference sensitive Siamese network,MSSNet),在多尺度特征融合过程中,引入一种时序特征差异注意力模块(temporal difference attention module,TDAM),基于各尺度的特征差异,提升关键区域特征的权重,使模型能够更加关注变化的建筑物目标,提升卫星影像变化检测精度。基于S2Looking数据集与WH实测数据进行消融实验,验证了各模块的有效性,以基准模型为参照,应用多尺度特征融合网络结构后,在2个数据集上的准确率分别提高了2.25百分点和0.99百分点; 进一步在特征融合过程中加入TDAM模块后,在2个数据集上的准确率分别提高了3.54百分点和7.76百分点。为了验证该文方法的检测性能,基于S2Looking数据集进行了对比实验,MSSNet在精确率、召回率和F1分数上分别达到了71.76%,54.71%和62.08%,相比近年来其他先进变化检测网络,其综合变化检测性能表现最优。该网络有效提升了卫星影像建筑物变化检测在复杂因素影响下的精度与鲁棒性,可为电网隐患的精准监测与预警提供可靠的技术支撑。

       

      Abstract: Detecting building changes (e.g., new unauthorized constructions or construction areas) along transmission line corridors based on remote sensing data enables the early warning of external damage risks, such as insufficient line-building clearance and collision of large machinery with lines, thereby ensuring power supply safety. However, existing deep learning models for change detection using satellite images suffer from insufficient accuracy due to blurred building target features, significant intra-class scale differences, and susceptibility to complex factors including varying shooting angles and changing radiation conditions. This study proposed a multi-scale difference-sensitive siamese neural network: MSSNet. Specifically, in the multi-scale feature fusion process, a temporal difference attention module (TDAM) was introduced to enhance the weights of key areas' features based on multi-scale feature differences. This effort allows the model to more significantly focus on changed building targets, thereby improving the accuracy of change detection based on satellite images. The module effectiveness was validated through ablation experiments on the S2Looking dataset and the WH measured data. Compared to the baseline model that excludes multi-scale feature fusion and TDAM, the model with a multi-scale feature fusion network increased the accuracy by 2.25 percentage points and 0.99 percentage points on the two datasets, respectively. Furthermore, the incorporation of the TDAM into the feature fusion process enhanced the model accuracy by 3.54 percentage points and 7.76 percentage points, respectively. To validate the detection performance of the MSSNet, comparative experiments were conducted on the S2Looking dataset. The results show that the MSSNet exhibited a precision of 71.76%, a recall of 54.71%, and an F1-score of 62.08%, outperforming other advanced change detection networks prevalent in recent years. The MSSNet effectively improves the accuracy and robustness of satellite image-based building change detection under complex influencing factors, thereby providing reliable technical support for the accurate monitoring and early warning of power grid hazards.

       

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