transformer target detection and appearance defect identification method based on VGG-net style migration

A target detection and appearance defect technology, applied in the field of image recognition, can solve problems such as insufficient number of negative samples, inaccurate appearance detection, appearance detection offset, etc., achieve transformer target detection and appearance defect recognition, and solve image acquisition and positioning inaccuracies Insufficient number of accurate and negative samples, and the effect of improving generalization ability

Active Publication Date: 2019-05-24
ZHOUSHAN ELECTRIC POWER SUPPLY COMPANY OF STATE GRID ZHEJIANG ELECTRIC POWER +1
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Problems solved by technology

However, due to the travel error of the image acquisition equipment, the target equipment does not necessarily appear in the fixed position of the captured image, and the appearance detection may be offset, resulting in inaccurate appearance detection
[0004] 2. Insufficient number of negative samples
However, most of the collected equipment images are positive samples, and there are few negative samples containing appearance defects such as rust and oil leakage.
A small number of negative samples will lead to overfitting of model training, poor generalization ability, and easy to cause false detection in application

Method used

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  • transformer target detection and appearance defect identification method based on VGG-net style migration
  • transformer target detection and appearance defect identification method based on VGG-net style migration
  • transformer target detection and appearance defect identification method based on VGG-net style migration

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Embodiment Construction

[0023] The technical solution of the present invention will be further described in detail below in conjunction with the accompanying drawings.

[0024] The transformer target detection and appearance defect recognition method based on VGG-net style transfer includes the following steps:

[0025] 1) Sample collection stage: use patrol robots in multiple substations to collect sample images of main transformers to form a sample set;

[0026] 2) Target detection stage: use the SSD target detection algorithm to accurately intercept the target device to detect appearance defects. SSD uses different layers of convolutional layers to perform multi-scale sliding window target detection. The division fineness of different convolution depths is different, shallow The grid division of the layer map is finer, the grid division of the deep layer map is rough, and the target scale is larger, and it has good recognition ability for large-size targets and small-size targets. The SSD workflow...

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Abstract

The invention discloses transformer target detection and appearance defect recognition method based on VGG-net style migration, and relates to the field of image recognition. At present, the appearance of the equipment in the substation is mainly based on the image acquisition of the robot. Due to the image acquisition error, the appearance detection may be offset, resulting in inaccurate appearance detection. In addition, the collected equipment images are mostly positive samples, including rust, oil leakage and the like. There are fewer negative samples of appearance defects, which will leadto model training over-fitting, poor generalization ability, and easy to cause false detection. The method first collects samples and constructs a sample set; then uses the SSD target detection algorithm to accurately intercept the target device for detecting appearance defects; and then uses the VGG-net-based style migration algorithm to generate defect samples for the problem of insufficient negative samples. The sample set is extended to improve the generalization ability of the discriminant model; finally, the appearance is detected according to Le-net's discriminant network. Transformertarget detection and appearance defect identification are accurately realized.

Description

technical field [0001] The invention relates to the field of image recognition, in particular to a transformer target detection and appearance defect recognition method based on VGG-net style transfer. Background technique [0002] At present, the condition-based maintenance technology of substation equipment mainly judges the operation status of equipment based on electrical quantities such as voltage and current, and physical quantities such as oil temperature and oil pressure. Graph technology to judge the health status of equipment. For highly intelligent substations, intelligent inspection robots have been gradually deployed, which can realize automatic inspections and collect defect images. For most substations, engineers usually use tools such as cameras, handheld terminals, and cameras to collect images of transformer defects. Engineers tag images and describe defect events in a log, often including events such as oil spills, corrosion, switches opening and closing...

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Application Information

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IPC IPC(8): G06K9/00
Inventor 位一鸣罗麟童力张非
Owner ZHOUSHAN ELECTRIC POWER SUPPLY COMPANY OF STATE GRID ZHEJIANG ELECTRIC POWER
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