BlenderProc: Reducing the Reality Gap with Photorealistic Rendering

semanticscholar(2020)

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摘要
BlenderProc is an open-source and modular pipeline for rendering photorealistic images of procedurally generated 3D scenes which can be used for training data-hungry deep learning models. The presented results on the tasks of instance segmentation and surface normal estimation suggest that our photorealistic training images reduce the gap between the synthetic training and real test domains, compared to less realistic training images combined with domain randomization. BlenderProc can be used to train models for various computer vision tasks such as semantic segmentation or estimation of depth, optical flow, and object pose. By offering standard modules for parameterizing and sampling materials, objects, cameras and lights, BlenderProc can simulate various real-world scenarios and provide means to systematically investigate the essential factors for sim2real transfer.
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