Research on Intelligent Cognition Method of Missing status of Pins Based on attention mechanism

Liu Weitao, Guan Huimin, Zhang Qian, Wu Gang, Tang Jian, Ding Meishuang
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引用次数: 1

Abstract

The state of the pins on the transmission tower has an important impact on the safety of the transmission line. However, the size of the pin itself is small, the characteristics of different angles vary greatly, and the surrounding environment may be complicated. The traditional manual inspection method is no longer suitable for the increasingly large transmission network. In response to the above problems, this paper proposes a detection method for bolt bolts of transmission towers based on the attention mechanism. First, preprocess the input pin image, and then scan the image with a perturbation neural network that includes an attention mechanism to get the most likely area, and cut and save the area for further processing. This can reduce The useless information on the image increases the proportion of the pins on the image. After multiple rounds of focusing, a pin image with obvious characteristics can be obtained. Secondly, the deconvolutional perturbation neural network is used to establish the feature mapping relationship from the whole to the partial pin image. Thirdly, according to the closed-loop control principle, the distinguishability evaluation index is used to obtain the difference of the extracted features in the feature space. According to the evaluation results, the feature space is layered, the images with large feature deviations are separated and recombined into a new data set, which is then used as the training set of the next level model to retrain the new model, and then based on the evaluation The result of the decision determines whether to continue to layer the training set, realize the multi-level feature space separation and self-optimization adjustment mechanism of the recognition structure, and establish a multi-level model recognition system with stronger generalization ability.
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基于注意机制的引脚缺失状态智能认知方法研究
输电塔引脚的状态对输电线路的安全有着重要的影响。但引脚本身尺寸较小,不同角度的特性差异较大,且周围环境可能比较复杂。传统的人工巡检方法已经不适合日益庞大的输电网。针对上述问题,本文提出了一种基于注意机制的输电塔螺栓螺栓检测方法。首先对输入引脚图像进行预处理,然后利用包含注意机制的摄动神经网络对图像进行扫描,得到最可能的区域,并对该区域进行切割和保存以供进一步处理。这样可以减少图像上的无用信息,增加引脚在图像上的比例。经过多轮聚焦后,可以得到具有明显特征的针脚图像。其次,利用反卷积摄动神经网络建立从整体到部分针脚图像的特征映射关系;第三,根据闭环控制原理,利用可分辨性评价指标获得提取的特征在特征空间中的差异;根据评价结果对特征空间进行分层,将特征偏差较大的图像分离并重组为新的数据集,然后将其作为下一层模型的训练集对新模型进行再训练,然后根据评价结果决定是否继续对训练集进行分层,实现识别结构的多层次特征空间分离和自优化调整机制。建立具有较强泛化能力的多层次模型识别系统。
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