Image sub-pixel edge extraction method having extensive adaptability

A sub-pixel edge and extraction method technology, applied in the field of image recognition, can solve the problem of edge extraction without considering strong noise and blurred image processing, slow speed and low-quality image stabilization, and inability to process strong noise blurred images.

Active Publication Date: 2016-08-31
BOZHON PRECISION IND TECH CO LTD
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Problems solved by technology

The use of the Hessian matrix method is the same as the present invention, but there is an essential difference in the pixel precision position calculation, which also leads to completely different applicability of the two methods
[0005] However, in industrial environment applications, images are disturbed by various factors, resulting in reduced image quality, including strong noise, edge blur, etc. How to stably detect sub-pixel-accurate edge features in low-quality images has not been well resolved.
Traditional pixel-accurate edge extraction algorithms cannot meet the accuracy requirements in industrial automation applications such as 3C automation equipment, electronic manufacturing, and industrial robot vision.
Sub-pixel edge extraction algorithms such as spatial moment method, gray moment method, Zernike moment method and digital correlation method have their own shortcomings in detection accuracy, calculation speed and anti-noise ability, and it is difficult to adapt to the harsh detection work in industrial environments. condition
[0006] Patent Document 1 can only extract the sub-pixel position of an elliptical object, which is insufficient in versatility, and cannot deal with the edge extraction of blurred objects
In the method disclosed in Patent Document 3, Sobel, Canny and LoG operators are used for edge detection, and then the results of the three operators are used for w

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  • Image sub-pixel edge extraction method having extensive adaptability
  • Image sub-pixel edge extraction method having extensive adaptability
  • Image sub-pixel edge extraction method having extensive adaptability

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Embodiment Construction

[0032] specific implementation plan

[0033] The present invention will be further described in detail below through specific embodiments in conjunction with the accompanying drawings.

[0034] Edge detection is a widely used algorithm in image processing. Many operators in machine vision technology need to be based on good edge extraction results, such as geometric template matching, line detection, circle detection, character recognition, defect detection, size measurement, etc. The invention provides a method capable of stably detecting edges of strong noise images or images with strong fuzzy scale changes, and the method can provide subpixel-accurate edge positions, connection relations of edge points, and length information of edge points. The edge detection efficiency is extremely efficient, which is very suitable for application in machine vision real-time systems. The invention can provide an important basis for the positioning and measurement technology in machine vi...

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Abstract

The invention discloses an image sub-pixel edge extraction method having extensive adaptability, comprising steps of adopting an adaptive high-low threshold value calculation method, executing a local maximum central value choosing operation on a gradient image by combining with gradient direction information of a pixel point after obtaining a gradient image, establishing a relative coordinate with a random pixel point as an origin point, taking eight-neighborhood pixels around the origin point as local maximum central value choosing data samples, obtaining a comparison result between the adjacent neighborhoods according to a gradient direction, determining whether the current pixel position is a boundary point candidate position, adopting a Hessian matrix method based on a Steger surface fitting method to solve a sub-pixel position of the boundary point and connecting boundary points for forming a line to constitute a set of directed continuity points. Determination whether an extreme value of a local gradient magnitude is a boundary point can be made by combining with a specific threshold value; if the local extreme value is greater than a given threshold value, the local extreme value is marked as a boundary point, and if the local extreme value is smaller than a given threshold value, the local extreme value is a noise point or a background point The invention has great instantaneity.

Description

technical field [0001] The invention relates to the technical field of image recognition, in particular to an image sub-pixel edge extraction method. Background technique [0002] In machine vision, in order to perform target positioning, measurement, detection or geometric feature extraction, etc., it is necessary to extract the edge of the target with sub-pixel accuracy. For example, the template matching method using geometric features in target positioning requires sub-pixel edge extraction for templates and targets; in measurement applications, it is necessary to accurately detect the edges of objects to perform accurate measurements; in detection applications, such as optical characters Verification of OCV, edge defect detection, etc. all require stable detection of sub-pixel edges of objects. [0003] Commonly used edge extraction algorithms include Roberts operator, Sobel operator, Prewitt operator, Laplacian operator and Canny operator, etc. Edge extraction algori...

Claims

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Application Information

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IPC IPC(8): G06T7/00
Inventor 吴晓军王鑫欢
Owner BOZHON PRECISION IND TECH CO LTD
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