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DeepSLAM: A Robust Monocular SLAM System With Unsupervised Deep Learning

Ruihao Li, Sen Wang, Dongbing Gu

2020IEEE Transactions on Industrial Electronics132 citationsDOI

Abstract

In this article, we propose DeepSLAM, a novel unsupervised deep learning based visual simultaneous localization and mapping (SLAM) system. The DeepSLAM training is fully unsupervised since it only requires stereo imagery instead of annotating ground-truth poses. Its testing takes a monocular image sequence as the input. Therefore, it is a monocular SLAM paradigm. DeepSLAM consists of several essential components, including Mapping-Net, Tracking-Net, Loop-Net, and a graph optimization unit. Specifically, the Mapping-Net is an encoder and decoder architecture for describing the 3-D structure of environment, whereas the Tracking-Net is a recurrent convolutional neural network architecture for capturing the camera motion. The Loop-Net is a pretrained binary classifier for detecting loop closures. DeepSLAM can simultaneously generate pose estimate, depth map, and outlier rejection mask. In this article, we evaluate its performance on various datasets, and find that DeepSLAM achieves good performance in terms of pose estimation accuracy, and is robust in some challenging scenes.

Topics & Concepts

Artificial intelligenceComputer scienceSimultaneous localization and mappingMonocularComputer visionGround truthDeep learningConvolutional neural networkPattern recognition (psychology)Classifier (UML)InferenceRobotMobile robotRobotics and Sensor-Based LocalizationAdvanced Vision and ImagingAdvanced Image and Video Retrieval Techniques
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