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Regression Forest Based RGB-D Visual Relocalization Using Coarse-to-Fine Strategy

Jikai Wang, Peng Wang, Deyun Dai, Meng Xu, Zonghai Chen

Year
2020
Citations
14

Abstract

Visual relocalization plays an important role in computer vision and robotics. However, feature ambiguities have made it remain challenging. In this work, we propose a novel regression forest based visual relocalization method that is performed in a coarse-to-fine manner. A topological regression tree is proposed to predict `coarse' subscenes where the camera locates. The pixel-coordinates correspondence regression tree is next employed to accomplish the camera pixel-coordinates predictions. By only considering the predictions within the predicted subscenes, we perform `fine' camera relocalization. We further propose to refine the pixel-coordinate predictions with graph-cut, which helps generating better pose hypotheses. We evaluate the proposed method on two public RGB-D datasets, including the 7Scenes (Microsoft) and the 12Scenes (Stanford University) datasets. We observe that the proposed method achieves accurate relocalization results and shows superior to or on-par accuracy with the state-of-the-art methods.

Keywords

Artificial intelligenceComputer scienceRGB color modelPixelRegressionFeature (linguistics)Computer visionTree (set theory)GraphVisualization

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