Wang Xiaole, Wang Bo, Luo Peng, Wang Leixiong, Wu Yurou
School of Electrical Engineering and Automation, Wuhan University, Wuhan 430072, China.
Wuhan Power Supply Company, State Grid Hubei Electric Power Company, Wuhan 430013, China.
Sensors (Basel). 2025 Jun 22;25(13):3882. doi: 10.3390/s25133882.
Wildfire detection in power transmission corridors is essential for providing timely warnings and ensuring the safe and stable operation of power lines. However, this task faces significant challenges due to the large number of smoke-like samples in the background, the complex and diverse target morphologies, and the difficulty of detecting small-scale smoke and flame objects. To address these issues, this paper proposed an improved Oriented R-CNN model enhanced with metric learning for wildfire detection in power transmission corridors. Specifically, a multi-center metric loss (MCM-Loss) module based on metric learning was introduced to enhance the model's ability to differentiate features of similar targets, thereby improving the recognition accuracy in the presence of interference. Experimental results showed that the introduction of the MCM-Loss module increased the average precision (AP) for smoke targets by 2.7%. In addition, the group convolution-based network ResNeXt was adopted to replace the original backbone network ResNet, broadening the channel dimensions of the feature extraction network and enhancing the model's capability to detect flame and smoke targets with diverse morphologies. This substitution led to a 0.6% improvement in mean average precision (mAP). Furthermore, an FPN-CARAFE module was designed by incorporating the content-aware up-sampling operator CARAFE, which improved multi-scale feature representation and significantly boosted performance in detecting small targets. In particular, the proposed FPN-CARAFE module improved the AP for fire targets by 8.1%. Experimental results demonstrated that the proposed model achieved superior performance in wildfire detection within power transmission corridors, achieving a mAP of 90.4% on the test dataset-an improvement of 6.4% over the baseline model. Compared with other commonly used object detection algorithms, the model developed in this study exhibited improved detection performance on the test dataset, offering research support for wildfire monitoring in power transmission corridors.
输电线路走廊中的野火检测对于及时发出预警以及确保电力线路的安全稳定运行至关重要。然而,由于背景中存在大量类似烟雾的样本、目标形态复杂多样以及难以检测小规模的烟雾和火焰物体,这项任务面临着重大挑战。为了解决这些问题,本文提出了一种改进的面向目标的区域卷积神经网络(Oriented R-CNN)模型,该模型通过度量学习进行增强,用于输电线路走廊中的野火检测。具体而言,引入了基于度量学习的多中心度量损失(MCM-Loss)模块,以增强模型区分相似目标特征的能力,从而提高在存在干扰情况下的识别准确率。实验结果表明,引入MCM-Loss模块使烟雾目标的平均精度(AP)提高了2.7%。此外,采用基于分组卷积的网络ResNeXt取代原来的主干网络ResNet,拓宽了特征提取网络的通道维度,并增强了模型检测具有不同形态的火焰和烟雾目标的能力。这种替换使平均精度均值(mAP)提高了0.6%。此外,通过结合内容感知上采样算子CARAFE设计了一个特征金字塔网络-内容感知重排融合(FPN-CARAFE)模块,该模块改进了多尺度特征表示,并显著提高了检测小目标的性能。特别是,所提出的FPN-CARAFE模块使火灾目标的AP提高了8.1%。实验结果表明,所提出的模型在输电线路走廊中的野火检测方面表现出卓越的性能,在测试数据集上实现了90.4%的mAP,比基线模型提高了6.4%。与其他常用的目标检测算法相比,本研究开发的模型在测试数据集上表现出了更高的检测性能,为输电线路走廊中的野火监测提供了研究支持。