Dense Monocular Depth Estimation In Complex Dynamic Scenes

2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
We present an approach to dense depth estimation from a single monocular camera that is moving through a dynamic scene. The approach produces a dense depth map from two consecutive frames. Moving objects are reconstructed along with the surrounding environment. We provide a novel motion segmentation algorithm that segments the optical flow field into a set of motion models, each with its own epipolar geometry. We then show that the scene can be reconstructed based on these motion models by optimizing a convex program. The optimization jointly reasons about the scales of different objects and assembles the scene in a common coordinate frame, determined up to a global scale. Experimental results demonstrate that the presented approach outperforms prior methods for monocular depth estimation in dynamic scenes.
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关键词
dense monocular depth estimation,complex dynamic scenes,single monocular camera,dense depth map,consecutive frames,moving objects,segmentation algorithm,optical flow field,motion models,epipolar geometry,convex program,common coordinate frame
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