Summary
An Italian innovative firm has developed an automatic "zero setup" system to control every kind of product. The solution is especially fit for food and non-food products analysis and it doesn't need to be programmed as it contains self-grading and self-learning features. The SME is interested in technical cooperation deals with partners specialized in the automation sector to propose integrated systems to end users or in commercial deals with technical assistance with end users directly.
Description
The company developed an industrial vision solution for quality control directly on the production line, capable of completely replacing human work, bringing the effectiveness and performance of supervision to new levels. Its performance is constant, repeatable and objective on 100% of production.
The proposed solution does not require configurations or settings and can be customized at any time to adapt to clients' tolerance meter.
The system performs three categories of check in-line:
- Morphological, for detection of anomalies of shape and size, breakages, deformations, missing pieces, etc.
- Chromatic, for detection of color variations, cooking errors, composition anomalies, etc.
- Aesthetic, for detection of imperfections whatever their appearance or size.
Thanks to deep learning, the natural variations of the objects do not interfere with the inspection, focused on the detection of anomalous details not known a priori.
Furthermore, the flexible approach of the system allows customers to modify, if necessary, the severity of the judgments relating to the three main evaluation criteria (morphology, color, and aesthetic appearance) as well as manually adding control rules that will integrate with those that form the system automatisms. This does not translate into an overlap of different and potentially conflicting rules: the system is in fact able to apply the new cascade rules, running a fluid "selection of the selection" in order to optimize the effectiveness of the inspection.
Each additional rule allows the client to teach the system, through supervised training, to recognize specific details or defects of the concerned product. In this way it will be able to:
- Detect the presence and quantity of these details or defects;
- Get the degree of integrity of these parts;
- Evaluate the severity index of these defects.
Moreover, the solution can be improved in its search for anomalies by extending the inspection to a plurality of senses.