Foreign matter detection method of railway train axle box rotating arm

A technology of foreign object detection and train axis, which is applied in neural learning methods, biological neural network models, image analysis, etc., can solve the problems of low accuracy and low efficiency of fault detection, and achieve improved coverage and accuracy, improved health, and high The effect of flexibility

Active Publication Date: 2022-02-01
HARBIN KEJIA GENERAL MECHANICAL & ELECTRICAL CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0003] The purpose of the present invention is to solve the problems of low accuracy and low efficiency of fault detection in existing manual fault detection methods, and to propose a foreign object detection method for railway train axlebox rotating arms

Method used

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  • Foreign matter detection method of railway train axle box rotating arm
  • Foreign matter detection method of railway train axle box rotating arm
  • Foreign matter detection method of railway train axle box rotating arm

Examples

Experimental program
Comparison scheme
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specific Embodiment approach 1

[0074] Specific implementation mode one: combine figure 1 To illustrate this embodiment, the method for detecting foreign objects on the axle box arm of a railway train in this embodiment includes the following steps:

[0075] Step 1, collecting the whole line array image data of the train;

[0076] Step 2: Carry out rough positioning on the line array image data of the whole vehicle collected in step 1, and obtain the position image of the axle box rotating arm;

[0077] Step 3. Using the obtained position image of the axlebox arm, establish a sample data set;

[0078] Step 4, select the detection network model;

[0079] Step 5. Use the sample data set established in step 3 to train the detection network model to obtain a trained detection network;

[0080] Step 6: Utilize the trained detection network to discriminate the foreign matter fault of the axlebox arm.

specific Embodiment approach 2

[0081] Specific embodiment two: the difference between this embodiment and specific embodiment one is that in step one, the whole car line array image data of the train is collected; the specific process is:

[0082] Cameras or video cameras are mounted on fixed equipment around the train track to take pictures of passenger trains running under different conditions. After the passenger train passes the camera or video camera, high-definition grayscale full-vehicle images are obtained.

[0083] Other steps and parameters are the same as those in Embodiment 1.

specific Embodiment approach 3

[0084] Embodiment 3: The difference between this embodiment and Embodiment 1 or 2 is that in step 2, the line array image data of the entire vehicle collected in step 1 is roughly positioned to obtain the position image of the axle box arm; the specific process is:

[0085] According to the wheelbase information of the axlebox arm and the prior knowledge of the position of the axlebox arm, the position image of the axlebox arm is intercepted from the line array image data of the whole vehicle.

[0086] In this way, the amount of calculation can be reduced and the speed of recognition can be improved.

[0087] Other steps and parameters are the same as those in Embodiment 1 or Embodiment 2.

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Abstract

The invention relates to a method for detecting foreign matter in a railway train axle box rotating arm, in particular to a method for detecting foreign matter in an axle box rotating arm. The purpose of the present invention is to solve the problems of low accuracy and efficiency of fault detection in the existing manual fault detection method. Step 1, collect the line array image data of the whole train; Step 2, perform rough positioning on the line array image data of the whole train collected in step 1, and obtain the position image of the axle box arm; Step 3, use the acquired axle box arm Position image, establish a sample data set; step 4, select the detection network model; step 5, use the sample data set established in step 3 to train the detection network model, and obtain a trained detection network; step 6, use the trained detection network The network is used to judge the foreign object fault of the axlebox arm. The invention belongs to the field of fault image recognition.

Description

technical field [0001] The invention belongs to the field of fault image recognition, and in particular relates to a method for detecting foreign matter in a railway passenger car axle box rotary arm based on deep learning. Background technique [0002] For a long time, vehicle inspectors have used manual inspection (that is, by viewing the images of passing vehicles) to judge whether there are foreign objects in the axlebox arm area. The inspection work is very important, but a large number of image screening makes the vehicle inspectors work hard. Fatigue is very easy to occur during the process, and it is also prone to missed and wrong detections, making it difficult to guarantee the accuracy and high efficiency of detection. Therefore, it is necessary to use automatic recognition in the fault detection of passenger trains, especially in today's deep learning technology, which is constantly mature and perfect, which can greatly improve the robustness caused by the single ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T7/00G06T7/62G06T7/70G06N3/04G06N3/08
CPCG06T7/0008G06T7/62G06T7/70G06N3/08G06T2207/10004G06T2207/30164G06N3/045
Inventor 燕天娇
Owner HARBIN KEJIA GENERAL MECHANICAL & ELECTRICAL CO LTD
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