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Power line inspection image automatic identification method based on neural network and power line inspection image automatic identification device thereof

A power line patrol and automatic recognition technology, applied in biological neural network model, character and pattern recognition, inspection time patrol and other directions, can solve the problems of upgrading, slow calculation speed, poor recognition accuracy, etc. Speed, the effect of improving execution speed

Inactive Publication Date: 2017-01-11
北京泛化智能科技有限公司 +4
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Problems solved by technology

The main disadvantage of these algorithms is that the discrimination method is too simple but the calculation logic is complex, resulting in poor recognition accuracy, and the calculation speed is slow (as the size of the picture increases and the color difference decreases, the running time of the algorithm increases exponentially, but the accuracy rate drops sharply. )
Moreover, it is difficult to significantly improve efficiency by using the above algorithm, and it is difficult to achieve breakthroughs in reducing calculation time or improving accuracy.

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  • Power line inspection image automatic identification method based on neural network and power line inspection image automatic identification device thereof
  • Power line inspection image automatic identification method based on neural network and power line inspection image automatic identification device thereof
  • Power line inspection image automatic identification method based on neural network and power line inspection image automatic identification device thereof

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[0035] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be described in further detail below in conjunction with specific embodiments and with reference to the accompanying drawings.

[0036] figure 1 It is a schematic flowchart of a neural network-based automatic recognition method for power line inspection images in an embodiment of the present invention.

[0037] In this embodiment, the neural network-based automatic identification method for power line inspection images includes the following steps:

[0038] Step S1 acquires the input image collected during power line inspection, and inputs the input image into the convolutional neural network; those skilled in the art can understand that the convolutional neural network includes but is not limited to: some filter banks and some Nonlinear response functions make up the layers in the network; each layer in the network is in turn used to filter and m...

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Abstract

The invention discloses a power line inspection image automatic identification method based on a neural network and a power line inspection image automatic identification system thereof. The method comprises the steps that input images acquired in power line inspection are acquired, and the input images are inputted to a convolutional neural network; 2) a feature vector group is obtained, and the input images apply the feature vectors in the feature vector group in turn so that digital description of the select box of the target type and the target position is obtained; and 3) convolutional operation is performed on the target input image so that the select box of the target object and the target position is obtained, and the object and the position expected to be selected of the highest confidence are also obtained. An end-to-end training model is established so that the target object in the images can be automatically identified, power line inspection image automatic identification can be realized based on the neural network and the efficiency can be enhanced.

Description

technical field [0001] The invention relates to the fields of power line inspection and image processing, in particular to a neural network-based automatic recognition method and device for power line inspection images. Background technique [0002] Due to the continuous expansion of the domestic power grid, long-distance transmission lines, such as UHV lines, have grown rapidly. However, many transmission lines are distributed between mountains and mountains, which leads to the traditional manual line inspection being affected by uncertain factors such as terrain environment, personnel quality, and weather conditions. The efficiency is low, the re-inspection period is long, and the accuracy of inspection data is not high. Therefore, in recent years, China has begun to gradually develop helicopter intelligent inspection technology, which can not be restricted by the geographical environment and greatly improves the efficiency. At the same time, due to the unique vision of t...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/02G07C1/20
CPCG06N3/02G07C1/20G06F18/00
Inventor 王弘尧王汉洋刘鑫林宏健苏可元
Owner 北京泛化智能科技有限公司
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