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DSC-SeNet:用于油浸式变压器碳迹实时分割的具有特征增强与聚合的单边网络

DSC-SeNet: Unilateral Network with Feature Enhancement and Aggregation for Real-Time Segmentation of Carbon Trace in the Oil-Immersed Transformer.

作者信息

Liu Liqing, Ji Hongxin, Feng Junji, Liu Xinghua, Zhang Chi, He Chun

机构信息

State Grid Tianjin Electric Power Research Institute, Tianjin 300180, China.

School of Electrical Engineering, China University of Mining and Technology, Xuzhou 221116, China.

出版信息

Sensors (Basel). 2024 Dec 25;25(1):43. doi: 10.3390/s25010043.

Abstract

Large oil-immersed transformers have metal-enclosed shells, making it difficult to visually inspect the internal insulation condition. Visual inspection of internal defects is carried out using a self-developed micro-robot in this work. Carbon trace is the main visual characteristic of internal insulation defects. The characteristics of carbon traces, such as multiple sizes, diverse morphologies, and irregular edges, pose severe challenges for segmentation accuracy and inference speed. In this paper, a feasible real-time network (deformable-spatial-Canny segmentation network, DSC-SeNet) was designed for carbon trace segmentation. To improve inference speed, a lightweight unilateral feature extraction framework is constructed based on a shallow feature sharing mechanism, which is designed to provide feature input for both semantic path and spatial path. Meanwhile, the segmentation model is improved in two aspects for better segmentation accuracy. For one aspect, to better perceive diverse morphology and edge features of carbon trace, three measures, including deformable convolution (DFC), Canny edge operator, and spatial feature refinement module (SFRM), were adopted for feature perception, enhancement, and aggregation, respectively. For the other aspect, to improve the fusion of semantic features and spatial features, coordinate attention feature aggregation (CAFA) is designed to reduce feature aggregation loss. Experimental results showed that the proposed DSC-SeNet outperformed state-of-the-art models with a good balance between segmentation accuracy and inference speed. For a 512 × 512 input, it achieved 84.7% mIoU, which is 6.4 percentage points higher than that of the baseline short-term dense convolution network (STDC), with a speed of 94.3 FPS on an NVIDIA GTX 2050Ti. This study provides technical support for real-time segmentation of carbon traces and transformer insulation assessment.

摘要

大型油浸式变压器具有金属封闭外壳,这使得难以直观检查其内部绝缘状况。在本研究中,使用自行研发的微型机器人对内部缺陷进行直观检查。碳痕是内部绝缘缺陷的主要直观特征。碳痕具有多种尺寸、多样形态和不规则边缘等特征,这对分割精度和推理速度构成了严峻挑战。本文设计了一种可行的实时网络(可变形空间Canny分割网络,DSC - SeNet)用于碳痕分割。为提高推理速度,基于浅层特征共享机制构建了轻量级单边特征提取框架,旨在为语义路径和空间路径提供特征输入。同时,从两个方面改进分割模型以提高分割精度。一方面,为更好地感知碳痕的多样形态和边缘特征,分别采用了可变形卷积(DFC)、Canny边缘算子和空间特征细化模块(SFRM)这三种措施进行特征感知、增强和聚合。另一方面,为改善语义特征和空间特征的融合,设计了坐标注意力特征聚合(CAFA)以减少特征聚合损失。实验结果表明,所提出的DSC - SeNet在分割精度和推理速度之间取得了良好平衡,性能优于现有模型。对于512×512的输入,其平均交并比(mIoU)达到84.7%,比基线短期密集卷积网络(STDC)高6.4个百分点,在NVIDIA GTX 2050Ti上的速度为94.3帧每秒。本研究为碳痕的实时分割和变压器绝缘评估提供了技术支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8501/11722572/0331e6a2a666/sensors-25-00043-g001.jpg

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