基于改进Faster R-CNN的变电设备红外图像检测

Detection of Substation Equipment in Infrared Images Based on Improved Faster R-CNN

  • 摘要: 针对变电设备红外图像检测算法中设备间遮挡、多尺度目标和背景复杂导致的检测精度低的问题,提出一种基于改进Faster R-CNN的变电设备红外图像检测模型。首先,在VGG16的基础上,改进特征提取网络,精简一些高级卷积,加快了模型的训练和测试速度。此外,在特征提取阶段引入CloBlock模块,进一步增强模型的特征学习能力。然后,增加了纵横比为1∶3和3∶1的锚框,以提高细长设备的检测精度。最后,采用多尺度RoI操作,帮助模型更准确地定位和检测各种尺寸的目标,从而提高检测的精度和鲁棒性。在变电设备红外图像数据集上对4种设备进行的实验结果表明,改进Faster R-CNN对电流互感器、电压互感器、绝缘子串和避雷器的检测精度AP值分别达到了92.83%、94.26%、96.85%和95.97%,检测速度达到了22帧/s,可以有效应对复杂背景、遮挡和多尺度目标等挑战。噪声和亮度的测试结果表明,改进Faster R-CNN具有较高的鲁棒性和稳定性。

     

    Abstract: To address the low detection accuracy of infrared image detection algorithms for substation equipment caused by equipment occlusion, multiscale objects, and complex backgrounds, this study proposes a substation equipment infrared image detection model based on an improved Faster R-CNN. Initially, the feature extraction network was enhanced based on VGG16 by streamlining certain high-level convolutions, thereby accelerating the training and testing speeds of the model. In addition, the CloBlock module was introduced during the feature extraction phase to further enhance the model's feature-learning capabilities. Subsequently, anchor boxes with aspect ratios of 1:3 and 3:1 were added to improve the detection accuracy of elongated devices. Finally, multiscale region of interest (RoI) operations were employed to help the model accurately localize and detect targets of various sizes, thereby improving detection accuracy and robustness. Experimental results on a substation equipment infrared image dataset containing three types of devices demonstrate that the improved Faster R-CNN achieved AP values of 92.83%, 94.26%, 96.85%, and 95.97% for current transformers, voltage transformers, insulator strings, and arresters, respectively, with a detection speed of 22 fps. The model can effectively handle challenges such as complex backgrounds, occlusions, and multiscale targets. In particular, noise and brightness tests showed that the improved Faster R-CNN exhibited strong robustness and stability.

     

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