CAD-driven machine vision

The authors present two experiments in CAD-driven object identification based on two types of sensor data: intensity images and range images. Both approaches perform object recognition with no special manual training or runtime user interaction. Although both approaches were tested only on single-object images, the intensity image approach may be applicable to multiple-object views. >

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