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Fruit size nondestructive detection method based on orthogonal binocular machine vision

A technology of machine vision and non-destructive testing, applied in instruments, measuring devices, image data processing, etc., can solve the problems of large manual grading errors, fruit damage, and low efficiency, and achieve the effects of noise removal, fast extraction, and high efficiency

Active Publication Date: 2019-08-27
HUNAN AGRICULTURAL UNIV
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Problems solved by technology

[0002] At present, the classification of fruit size in China mainly relies on manual and mechanical implementation. The maximum axial diameter is measured by human eyes or vernier calipers as the fruit diameter. Due to the large difference in fruit shape, the maximum axial diameter is not easy to grasp. Manual grading errors are very large, and in the grading process, the work is cumbersome, the efficiency is low, and it is easy to cause serious damage to the fruit. At the same time, there are strong subjective factors. This kind of grading method can no longer meet the needs of fruit grading.
[0003] In recent years, the detection method has gradually turned to the direction of machine vision, which can realize non-destructive testing, and has the characteristics of high efficiency and high accuracy. Nowadays, machine vision technology is widely used in product classification, such as eggs, citrus, pears, etc. There are many varieties, different sizes and shapes, and less research on fruits with complex structures

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  • Fruit size nondestructive detection method based on orthogonal binocular machine vision
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  • Fruit size nondestructive detection method based on orthogonal binocular machine vision

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Embodiment Construction

[0049] In order to make the technical means, creative features, objectives and effects achieved by the present invention easy to understand, the present invention will be further described below in conjunction with specific illustrations.

[0050] see Figure 1 to Figure 8 The non-destructive detection method of fruit size based on orthogonal binocular machine vision, the specific steps are as follows:

[0051] Step S100): building a monocular machine vision system

[0052] Monocular machine vision system includes industrial camera A1, annular LED stepless dimming light source A2, camera height adjustment mechanism A3, non-mirror cylinder (2cm in height, 5.95cm in diameter) A4, lifting platform A5, light box A6, computer A7 and scale Ruler A8, in which the industrial camera A1, the ring-shaped LED stepless dimming light source A2, the camera height adjustment mechanism A3, the non-mirror cylinder A4, the lifting platform A5 and the scale A8 are placed in the light box A6 resp...

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Abstract

The invention discloses a fruit size nondestructive detection method based on orthogonal binocular machine vision. Two industrial cameras with the orthogonal central axes are adopted to carry out image acquisition on an object; then an acquired image is subjected to preprocessing, characteristic quantity extraction and reasonable algorithm calculation through an MATLAB algorithm to obtain a top view standard contour graph and a side view standard contour graph; the side view standard contour graph is subjected to data processing to obtain the distance from the maximum fruit diameter surface tothe fruit bottom, which is called the height of the fruit diameter surface; the top view standard contour graph is subjected to data processing to obtain the calculated fruit diameter; by combining the height of the fruit diameter surface, a height proportion coefficient k is introduced for correcting the calculated fruit diameter to obtain the fruit diameter with a relatively small error; and then comparison is carried out based on the national fruit grading standard, so that the nondestructive measurement of the fruit size is realized. The method has the characteristics of standardization,high efficiency, high precision and damage detection, thereby having an important research significance.

Description

technical field [0001] The invention relates to the technical field of fruit detection, in particular to a nondestructive detection method for fruit size based on orthogonal binocular machine vision. Background technique [0002] At present, the classification of fruit size in China mainly relies on manual and mechanical implementation. The maximum axial diameter is measured by human eyes or vernier calipers as the fruit diameter. Due to the large difference in fruit shape, the maximum axial diameter is not easy to grasp. Manual grading errors are very large, and in the grading process, the work is cumbersome, the efficiency is low, and it is easy to cause serious damage to the fruit. At the same time, there are strong subjective factors. This kind of grading method can no longer meet the needs of fruit grading. [0003] In recent years, the detection method has gradually turned to the direction of machine vision, which can realize non-destructive testing, and has the charac...

Claims

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Application Information

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IPC IPC(8): G01B11/08G06T5/00G06T7/00G06T7/136G06T7/187
CPCG01B11/08G06T7/0004G06T7/136G06T7/187G06T2207/30128G06T5/70
Inventor 李旭刘成鑫陈熵谢方平康江廖杰谭宁宁巫帮锡
Owner HUNAN AGRICULTURAL UNIV
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