Robust Visual Slam Across Seasons

2015 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2015)

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摘要
In this paper, we present an appearance-based visual SLAM approach that focuses on detecting loop closures across seasons. Given two image sequences, our method first extracts one descriptor per image for both sequences using a deep convolutional neural network. Then, we compute a similarity matrix by comparing each image of a query sequence with a database. Finally, based on the similarity matrix, we formulate a flow network problem and compute matching hypotheses between sequences. In this way, our approach can handle partially matching routes, loops in the trajectory and different speeds of the robot. With a matching hypothesis as loop closure information and the odometry information of the robot, we formulate a graph based SLAM problem and compute a joint maximum likelihood trajectory.
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关键词
robust visual SLAM,appearance-based visual SLAM approach,loop-closure detection,image sequences,descriptor extraction,deep convolutional neural network,similarity matrix,query sequence,flow network problem,matching hypothesis,partially matching routes,odometry information,graph based SLAM problem,joint maximum likelihood trajectory
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