4.7 Article

AS acked LSTM-Based Approach for Reducing Semantic Pose Estimation Error

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2020.3031156

关键词

Deep learning; localization error; long short-term memory (LSTM); measurement uncertainty; semantic simultaneous localization and mapping (SLAM); sensor noise

资金

  1. Khalifa University of Science and Technology [RC1-2018-KUCARS]

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This article presents a novel error reduction approach based on stacked LSTM for semantic SLAM tasks, improving estimation accuracy by constructing training and testing datasets, quantitatively measuring performance using the ATE metric, and verifying the effectiveness on real-time sequences.
Achieving high estimation accuracy is significant for semantic simultaneous localization and mapping (SLAM) tasks. Yet, the estimation process is vulnerable to several sources of error, including limitations of the instruments used to perceive the environment, shortcomings of the employed algorithm, environmental conditions, or other unpredictable noise. In this article, a novel stacked long short-term memory (LSTM)-based error reduction approach is developed to enhance the accuracy of semantic SLAM in presence of such error sources. Training and testing data sets were constructed through simulated and real-time experiments. The effectiveness of the proposed approach was demonstrated by its ability to capture and reduce semantic SLAM estimation errors in training and testing data sets. Quantitative performance measurement was carried out using the absolute trajectory error (ATE) metric. The proposed approach was compared with vanilla and bidirectional LSTM networks, shallow and deep neural networks, and support vector machines. The proposed approach outperforms all other structures and was able to significantly improve the accuracy of semantic SLAM. To further verify the applicability of the proposed approach, it was tested on real-time sequences from the TUM RGB-D data set, where it was able to improve the estimated trajectories.

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