MaskFusion: Real-Time Recognition, Tracking and Reconstruction of Multiple Moving Objects.

ISMAR(2018)

引用 334|浏览59
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摘要
We present MaskFusion, a real-time, object-aware, semantic and dynamic RGB-D SLAM system that goes beyond traditional systems which output a purely geometric map of a static scene. MaskFusion recognizes, segments and assigns semantic class labels to different objects in the scene, while tracking and reconstructing them even when they move independently from the camera. As an RGB-D camera scans a cluttered scene, image-based instance-level semantic segmentation creates semantic object masks that enable realtime object recognition and the creation of an object-level representation for the world map. Unlike previous recognition-based SLAM systems, MaskFusion does not require known models of the objects it can recognize, and can deal with multiple independent motions. MaskFusion takes full advantage of using instance-level semantic segmentation to enable semantic labels to be fused into an object-aware map, unlike recent semantics enabled SLAM systems that perform voxel-level semantic segmentation. We show augmented-reality applications that demonstrate the unique features of the map output by MaskFusion: instance-aware, semantic and dynamic. Code will be made available.
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关键词
assigns semantic class labels,image-based instance-level semantic segmentation,semantic object masks,object-level representation,multiple independent motions,object-aware map,voxel-level semantic segmentation,multiple moving objects,object-aware RGB-D SLAM system,semantic RGB-D SLAM system,dynamic RGB-D SLAM system,recognition-based SLAM systems,geometric map,object recognition
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