I have a client using wooden palettes in their processing, sometimes the palette will become contaminated during storage or during the processing. Does anyone know of a product that can compare say a database picture to a live snapshot to create a notification if a palette looks different to the database picture? Look forward to hearing from anyone in the IPVM community with ideas.
Analytic To Detect Contaminated Palette?
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Ask questions and get answers to your physical security questions from IPVM team members and fellow subscribers.
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