Falling Things: A Synthetic Dataset for 3D Object Detection and Pose Estimation

2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)(2018)

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摘要
We present a new dataset, called Falling Things (FAT), for advancing the state-of-the-art in object detection and 3D pose estimation in the context of robotics. By synthetically combining object models and backgrounds of complex composition and high graphical quality, we are able to generate photorealistic images with accurate 3D pose annotations for all objects in all images. Our dataset contains 60k annotated photos of 21 household objects taken from the YCB dataset. For each image, we provide the 3D poses, per-pixel class segmentation, and 2D/3D bounding box coordinates for all objects. To facilitate testing different input modalities, we provide mono and stereo RGB images, along with registered dense depth images. We describe in detail the generation process and statistical analysis of the data.
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关键词
synthetic dataset,object detection,pose estimation,object models,complex composition,high graphical quality,photorealistic images,YCB dataset,2D/3D bounding box coordinates,stereo RGB images,registered dense depth images,household objects,annotated photos,Falling Things,mono RGB images,generation process,statistical analysis
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