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High-density flexible substrate appearance defect detection system and method based on depth learning

A deep learning and appearance defect technology, applied in optical testing defects/defects, measuring devices, scientific instruments, etc., can solve the problems of low efficiency of systems and methods, inability to detect multiple defects at the same time, avoid waste and improve work efficiency Effect

Inactive Publication Date: 2019-01-04
SOUTH CHINA UNIV OF TECH
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Problems solved by technology

[0005] In view of the low efficiency of manual visual inspection and traditional appearance defect detection systems and methods in the manufacturing process of high-density flexible substrates, and the inability to detect multiple defects at the same time, the present invention provides a high-density flexible substrate appearance defect detection system and method based on deep learning. method to achieve rapid location and type identification of appearance defects on high-density flexible substrates

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  • High-density flexible substrate appearance defect detection system and method based on depth learning
  • High-density flexible substrate appearance defect detection system and method based on depth learning
  • High-density flexible substrate appearance defect detection system and method based on depth learning

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Embodiment Construction

[0033] In order to describe the present invention more specifically, the flexible substrate appearance defect detection system and method will be described in detail below in conjunction with the accompanying drawings and specific embodiments. network), all of which can be understood or implemented by those skilled in the art with reference to the prior art, and will not be repeated here.

[0034] Such as figure 1 As shown, a high-density flexible substrate appearance defect detection system based on deep learning includes a hardware platform and a software detection platform. The hardware platform consists of two parts. The first part is the precision loading control platform, which consists of the following three parts: ⑴The stage adopts a vacuum adsorption stage device, so that the flexible substrate to be tested is firmly attached to the stage , ⑵ motor and driving device, used to drive the movement of the stage, ⑶ motion control board, used to transmit the control signal...

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Abstract

The invention discloses a high-density flexible substrate appearance defect detection system and a method based on depth learning, the method comprises a hardware platform and a software detection platform. The detecting method comprises the following steps: FICS images containing different defects is collected as training samples; pre-processing on the sample image is carried out, including the unified standard size and manual marking of the defect position and the category in the sample; a sample image is input into a depth learning model based on an improved YOLO convolution neural networkto carry out training to obtain model parameters which are output as defect positions and categories; the collected image size is standardized and input into a trained depth learning model for detection, and the defect position and the category information in the acquired image are obtained. The method can achieve the rapid positioning and the type identification of the appearance defects of the high-density flexible substrate, and solves the problem that the traditional defect detection system and the method are low in speed and is difficult to achieve high-density FICS appearance defects.

Description

technical field [0001] The invention belongs to the technical field of machine vision surface defect detection, and in particular relates to a high-density flexible substrate appearance defect detection system and method based on deep learning. Background technique [0002] Flexible Integrated Circuit Substrate (FICS for short) is a high-density flexible printed circuit board that can be used as an IC packaging substrate. In the production process of high-density FICS, due to the precision of process control, it is inevitable to have defects in appearance. Rapid positioning and type identification of various appearance defects of FICS through high-precision visual inspection is the key to quality control in the high-density FICS manufacturing process. [0003] At present, manufacturers mainly use manual visual inspection with a magnifying glass to achieve high-density FICS appearance defect detection. This method has low detection efficiency, consumes a large amount of lab...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01N21/88
CPCG01N21/8851G01N2021/8883G01N2021/8887
Inventor 罗家祥吴冬冬胡跃明
Owner SOUTH CHINA UNIV OF TECH
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