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S3M: Semantic Segmentation Sparse Mapping for UAVs with RGB-D Camera

Authors :
Canh, Thanh Nguyen
Nguyen, Van-Truong
Van, Xiem Hoang
Elibol, Armagan
Chong, Nak Young
Canh, Thanh Nguyen
Nguyen, Van-Truong
Van, Xiem Hoang
Elibol, Armagan
Chong, Nak Young
Publication Year :
2024

Abstract

Unmanned Aerial Vehicles (UAVs) hold immense potential for critical applications, such as search and rescue operations, where accurate perception of indoor environments is paramount. However, the concurrent amalgamation of localization, 3D reconstruction, and semantic segmentation presents a notable hurdle, especially in the context of UAVs equipped with constrained power and computational resources. This paper presents a novel approach to address challenges in semantic information extraction and utilization within UAV operations. Our system integrates state-of-the-art visual SLAM to estimate a comprehensive 6-DoF pose and advanced object segmentation methods at the back end. To improve the computational and storage efficiency of the framework, we adopt a streamlined voxel-based 3D map representation - OctoMap to build a working system. Furthermore, the fusion algorithm is incorporated to obtain the semantic information of each frame from the front-end SLAM task, and the corresponding point. By leveraging semantic information, our framework enhances the UAV’s ability to perceive and navigate through indoor spaces, addressing challenges in pose estimation accuracy and uncertainty reduction. Through Gazebo simulations, we validate the efficacy of our proposed system and successfully embed our approach into a Jetson Xavier AGX unit for real-world applications.<br />2024 IEEE/SICE International Symposium on System Integration (SII), Ha Long, Vietnam, January 8-11, 2024

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1426721695
Document Type :
Electronic Resource