Understanding barriers to implementing machine vision
Survey data shows that there are a number of barriers to implementing machine vision applications, but expertise and knowhow is the main stumbling block for most organizations.

Overview
The survey shows that there are a number of barriers to implementing machine vision applications, but expertise and knowhow is the main stumbling block for most organizations.
While machine vision technology has matured significantly in recent years, bridging the gap between what is technically possible and what organizations can realistically deploy remains one of the biggest challenges in the industry.
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