Automatic identification method for damage area of aerospace composite material

A composite material and aerospace technology, applied in the field of aerospace vehicle damage detection and maintenance support, can solve the problems of large background noise in infrared reconstruction images, small damage defect size, unfavorable image segmentation, etc.

Active Publication Date: 2021-05-18
中国空气动力研究与发展中心超高速空气动力研究所
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Problems solved by technology

On the one hand, if the defect detection rate is improved to a certain extent under the premise of fully satisfying the preservation of details, the noise is also retained, which is easy to cause misjudgment of defect recognition, resulting in an increase in the false detection rate
On the other hand, if only the overall denoising of the image is satisfied, the size of the damage defects caused by the impact of tiny debris is small and the number is large, and these tiny defects similar to the noise will be removed together with the denoising process, reducing the damage of defects. Detection rate and detection accuracy
Therefore, the above-mentioned conventional segmentation method is applied to the object of the present invention, that is, the in

Method used

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  • Automatic identification method for damage area of aerospace composite material
  • Automatic identification method for damage area of aerospace composite material
  • Automatic identification method for damage area of aerospace composite material

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Embodiment

[0232]In this embodiment, the infrared thermal imaging camera collected 502 frames of images with a pixel size of 512×640. That is, there are 327,680 temperature points on each map, and the temperature value of each temperature point is recorded 502 times. This time-varying temperature condition constitutes the transient thermal response TTR of the temperature point. Step 1: After extracting the effective transient thermal response from the infrared thermal sequence, divide the area according to the defect type, and extract the typical transient thermal response from each type of divided area. When extracting the effective transient thermal response, set the parameter Re CL =0.92, 375 valid transient thermal responses containing complete defect information were extracted from 327,680 temperature points. According to the pixel points, the membership degree of each cluster center is softened, and 185, 43 and 147 thermal response curves are divided into corresponding categorie...

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Abstract

The invention discloses an automatic identification method for a damage area of an aerospace composite material. The method comprises the following steps: extracting typical transient thermal response of each type of defects; obtaining an infrared reconstruction image; obtaining a low-quality infrared reconstructed image; solving a weight coefficient of three segmentation performances of noise removal, detail reservation and edge maintenance; constructing an infrared image segmentation function; obtaining a weight coefficient of the objective function for realizing each segmentation performance; constructing a full-pixel infrared image segmentation target function, and performing image segmentation on the reconstructed full-pixel infrared image by using the segmentation model; and achieving infrared full-pixel image segmentation on the image segmentation layer to obtain a segmented image. According to the method, defect segmentation in the infrared reconstructed image is carried out by utilizing a multi-objective optimization theory, objective functions are respectively constructed for a noise problem and an edge blurring problem so as to improve segmentation precision, a high defect detection rate is ensured, a false detection rate is reduced, a damage defect area in the reconstructed image is effectively extracted, and quantitative research of complex defects is facilitated.

Description

technical field [0001] The invention belongs to the technical field of aerospace vehicle damage detection and maintenance support, and more specifically, the invention relates to an automatic identification method for damage areas of aerospace composite materials. Background technique [0002] With the urgent need for weight reduction of aerospace vehicles, lightweight structural materials with excellent mechanical properties, especially lightweight composite materials represented by high-strength / high-modulus carbon fiber composite materials and honeycomb structure materials, have increasingly become the focus of aerospace research. hotspot. At the same time, composite materials with special functional uses, such as stealth coating materials, carbon-based heat-resistant materials and other functional composite materials, are also more widely used in the aerospace field. However, in the process of manufacturing, assembly processing or real-time use of composite materials, s...

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Application Information

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IPC IPC(8): G06K9/00G06K9/34G06K9/46G06K9/62G06N3/12G06T5/00
CPCG06T5/002G06N3/126G06T2207/20192G06V20/00G06V10/267G06V10/44G06F18/2414G06F18/23213
Inventor 黄雪刚雷光钰殷春谭旭彤罗庆石安华
Owner 中国空气动力研究与发展中心超高速空气动力研究所
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