Dark Reciprocal-Rank: Teacher-to-student Knowledge Transfer from Self-localization Model to Graph-convolutional Neural Network

2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021)(2021)

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摘要
In visual robot self-localization, graph-based scene representation and matching have recently attracted research interest as robust and discriminative methods for self-localization. Although effective, their computational and storage costs do not scale well to large-size environments. To alleviate this problem, we formulate self-localization as a graph classification problem and attempt to use the graph convolutional neural network (GCN) as a graph classification engine. A straightforward approach is to use visual feature descriptors that are employed by state-of-the-art self-localization systems, directly as graph node features. However, their superior performance in the original self-localization system may not necessarily be replicated in GCN-based self-localization. To address this issue, we introduce a novel teacherto-student knowledge-transfer scheme based on rank matching, in which the reciprocal-rank vector output by an off-the-shelf state-of-the-art teacher self-localization model is used as the dark knowledge to transfer. Experiments indicate that the proposed graph-convolutional self-localization network (GCLN) can significantly outperform state-of-the-art self-localization systems, as well as the teacher classifier. The code and dataset are available at https ://github.com/Koj iTakeda00/Reciprocal_rank_KT_GCN.
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关键词
dark Reciprocal-rank,teacher-to-student knowledge transfer,graph-convolutional neural network,visual robot self-localization,graph-based scene representation,robust methods,discriminative methods,computational storage costs,graph classification problem,graph convolutional neural network,graph classification engine,visual feature descriptors,state-of-the-art self-localization systems,graph node features,original self-localization system,GCN-based self-localization,novel teacher-to-student knowledge-transfer scheme,rank matching,reciprocal-rank vector output,off-the-shelf state-of-the-art teacher self-localization model,dark knowledge,self-localization network
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