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GeneA-SLAM2: Dynamic SLAM with AutoEncoder-Preprocessed Genetic Keypoints Resampling and Depth Variance-Guided Dynamic Region Removal

About

Existing semantic SLAM in dynamic environments mainly identify dynamic regions through object detection or semantic segmentation methods. However, in certain highly dynamic scenarios, the detection boxes or segmentation masks cannot fully cover dynamic regions. Therefore, this paper proposes a robust and efficient GeneA-SLAM2 system that leverages depth variance constraints to handle dynamic scenes. Our method extracts dynamic pixels via depth variance and creates precise depth masks to guide the removal of dynamic objects. Simultaneously, an autoencoder is used to reconstruct keypoints, improving the genetic resampling keypoint algorithm to obtain more uniformly distributed keypoints and enhance the accuracy of pose estimation. Our system was evaluated on multiple highly dynamic sequences. The results demonstrate that GeneA-SLAM2 maintains high accuracy in dynamic scenes compared to current methods. Code is available at: https://github.com/qingshufan/GeneA-SLAM2.

Shufan Qing, Anzhen Li, Qiandi Wang, Yuefeng Niu, Mingchen Feng, Guoliang Hu, Jinqiao Wu, Fengtao Nan, Yingchun Fan• 2025

Related benchmarks

TaskDatasetResultRank
SLAMTUM Highly Dynamic Sequences fr3 w rpy
ATE (m)0.03
7
SLAMTUM Highly Dynamic Sequences (fr3 w xyz)
ATE (m)0.014
7
SLAMTUM Highly Dynamic Sequences (fr3/w/half)
ATE (m)0.025
7
SLAMTUM Highly Dynamic Sequences (fr3/w/static)
ATE (m)0.007
7
SLAM Trajectory EstimationBONN (crowd2)
ATE RMSE (m)0.02
4
SLAM Trajectory EstimationBONN person track
ATE RMSE (m)0.044
4
SLAM Trajectory EstimationBONN person track2
RMSE (ATE, m)0.055
4
SLAM Trajectory EstimationBONN synchronous
ATE RMSE (m)0.012
4
SLAM Trajectory EstimationBONN (synchronous2)
ATE RMSE (m)0.008
4
SLAM Trajectory EstimationBONN (crowd3)
ATE RMSE (m)0.028
4
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