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A BigBiGAN-Based Loop Closure Detection Algorithm for Indoor Visual SLAM

机译:基于BigBigan的循环闭合检测算法,用于室内视觉血液

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摘要

Loop closure detection serves as the fulcrum of improving the accuracy and precision in simultaneous localization and mapping (SLAM). The majority of loop detection methods extract artificial features, which fall short of learning comprehensive data information, but unsupervised learning as a typical deep learning method excels in self-access learning and clustering to analyze the similarity without handling the data. Moreover, the unsupervised learning method does solve restrictions on image quality and singleness semantics in many traditional SLAM methods. Therefore, a loop closure detection strategy based on an unsupervised learning method is proposed in this paper. The main component adopts BigBiGAN to extract features and establish an original bag of words. Then, the complete bag of words is used to detect loop closing. Finally, a considerable validation check of the ORB descriptor is added to verify the result and output outcome of loop closure detection. The proposed algorithm and other compared algorithms are, respectively, applied on Autolabor Pro1 to execute the indoor visual SLAM. The experiment shows that the proposed algorithm increases the recall rate by 20% compared with ORB-SLAM2 and LSD-SLAM. And it also improves at least 40.0% accuracy than others and reduces 14% time loss of ORB-SLAM2. Therefore, the presented SLAM based on BigBiGAN does benefit much the visual SLAM in the indoor environment.
机译:环路闭合检测用作提高同时定位和映射(SLAM)中提高精度和精度的支点。大多数环路检测方法提取人工特征,这缺乏学习综合数据信息,但无监督的学习作为典型的深度学习方法在自访问学习和聚类中擅长,以分析相似度而无需处理数据。此外,无监督的学习方法确实在许多传统的SLAM方法中解决了对图像质量和单个语义的限制。因此,本文提出了一种基于无监督学习方法的环路闭合检测策略。主要组件采用Bigbigan提取特征并建立原始的单词。然后,完整的单词袋用于检测循环关闭。最后,添加了对ORB描述符的相当大的验证检查以验证环路闭合检测的结果和输出结果。所提出的算法和其他比较算法分别应用于Autolabor Pro1以执行室内视觉SLAM。实验表明,与ORB-SLAM2和LSD-SLAM相比,该算法将召回速率提高20%。并且它还可以提高比其他更精度至少为40.0%,并减少了14%的ORB-SLAM2的时间损失。因此,基于Bigbigan的卓越的Slam确实有利于室内环境中的视觉猛击。

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