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Intel - Reimagining What's Next

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35 INTEL 2021 Object Size Detection with the OpenVINO™ Toolkit Case study Using OpenVINO with Windows on the Intel® Neural Compute Stick 2 - Engineering Bench Talk ▲ Traditional methods of defect detection faced a number of challenges that reduced the quality of the process. Applying deep learning algorithms to captured video information increases the speed and accuracy of identifying objects that do not meet a predefined standard. Though deep learning is a relatively new solution for defect detection, it can expand the scope of the solution from simple detection of a defect to classification of the type of defect. Training deep learning networks to identify types of defects makes it possible to automatically route objects based upon their severity— such as the size of the flaw. In this example of the Intel® OpenVINO™ toolkit, we will look at a simple example of how video images can be used to determine whether an object is defective based upon its surface area. Object Size Detection Pipeline In prior blog posts, we've seen examples of face and vehicle detection using images captured by a video camera. In this application, we'll look at a different type of detection using deep learning to identify an object on a conveyor belt, measure its surface area, and check for defects. M. Tim Jones, Mouser Electronics Explore how you can use the Intel ® OpenVINO ™ toolkit to automatically identify and classify defective objects on a conveyor belt.

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