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JIST: Joint Image and Sequence Training for Sequential Visual Place Recognition

Gabriele Berton, Gabriele Trivigno, Barbara Caputo, Carlo Masone

发表年份
2023
引用次数
4
访问权限
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摘要

Visual Place Recognition aims at recognizing previously visited places by relying on visual clues, and it is used in robotics applications for SLAM and localization. Since typically a mobile robot has access to a continuous stream of frames, this task is naturally cast as a sequence-to-sequence localization problem. Nevertheless, obtaining sequences of labelled data is much more expensive than collecting isolated images, which can be done in an automated way with little supervision. As a mitigation to this problem, we propose a novel Joint Image and Sequence Training protocol (JIST) that leverages large uncurated sets of images through a multi-task learning framework. With JIST we also introduce SeqGeM, an aggregation layer that revisits the popular GeM pooling to produce a single robust and compact embedding from a sequence of single-frame embeddings. We show that our model is able to outperform previous state of the art while being faster, using 8 times smaller descriptors, having a lighter architecture and allowing to process sequences of various lengths. The code is available at <uri xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">https://github.com/ga1i13o/JIST</uri>

关键词

Computer scienceSequence (biology)PoolingArtificial intelligenceEmbeddingFrame (networking)Code (set theory)Task (project management)RoboticsImage (mathematics)

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