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How to choose the most suitable visual i
How to choose the most suitable visual i
2024-04-01 15:19:20
Visual inspection equipment can replace manual inspection, automatic selection of abnormal products. Because it can save a lot of costs for enterprises, it is loved by enterprises.
What are the instability factors behind
What are the instability factors behind
2024-04-02 17:02:15
When machine vision inspection equipment inspects products, it may encounter some unstable factors, which may affect the accuracy and consistency of the test results. Generally, the stability and accu
To create the perfect machine vision sys
To create the perfect machine vision sys
2024-04-01 15:49:13
Visual inspection is therefore widely used in the production, assembly and packaging process, to detect defects to prevent defective products from entering the market and then affecting the corporate brand reputation has this immeasurable value.
What is the impact of machine vision mea
What is the impact of machine vision mea
2024-03-29 17:35:09
There are many factors that affect the measurement accuracy of machine vision inspection equipment​, including the brightness, uniformity and directivity of the light source will directly affect the quality and clarity of the image, affecting the measurement accuracy.
Non-destructive testing: gear hardware a
Non-destructive testing: gear hardware a
2024-03-29 10:03:19
Gear is a mechanical transmission element, usually composed of cylindrical or conical rack and pinion, used to transfer power and torque, to achieve rotation between different axes. Gears are usually
Key elements to improve the accuracy of
Key elements to improve the accuracy of
2024-03-25 17:46:25
There are many factors that affect the accuracy of CCD machine vision inspection equipment, such as light source stability, lens quality, image resolution, image processing algorithm, environmental factors, calibration, machine learning model, t