LOOP CLOSURE DETECTION OF VISUAL SLAM BASED ON VARIATIONAL AUTOENCODER

Loop closure detection of visual SLAM based on variational autoencoder

Loop closure detection of visual SLAM based on variational autoencoder

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Loop closure detection is an important module for simultaneous localization and mapping (SLAM).Correct detection of loops can reduce the cumulative drift in positioning.Because traditional detection methods rely on handicraft features, false positive detections can occur when Mechanical stress regulates gene expression via Rho/Rho-kinase signaling pathway the environment changes, resulting in incorrect estimates and an inability to obtain accurate maps.In this research paper, a loop closure detection method based on a variational autoencoder (VAE) is proposed.

It is intended to be used as a feature extractor to extract image features through neural networks to replace the handicraft features used in traditional methods.This method extracts a low-dimensional vector as the representation of the image.At the same time, the Institutional delivery services utilization and its determinant factors among women who gave birth in the past 24 months in Southwest Ethiopia attention mechanism is added to the network and constraints are added to improve the loss function for better image representation.In the back-end feature matching process, geometric checking is used to filter out the wrong matching for the false positive problem.

Finally, through numerical experiments, the proposed method is demonstrated to have a better precision-recall curve than the traditional method of the bag-of-words model and other deep learning methods and is highly robust to environmental changes.In addition, experiments on datasets from three different scenarios also demonstrate that the method can be applied in real-world scenarios and that it has a good performance.

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