Stillleben: Realistic Scene Synthesis for Deep Learning in Robotics

12 May 2020Max SchwarzSven Behnke

Training data is the key ingredient for deep learning approaches, but difficult to obtain for the specialized domains often encountered in robotics. We describe a synthesis pipeline capable of producing training data for cluttered scene perception tasks such as semantic segmentation, object detection, and correspondence or pose estimation... (read more)

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