Slam estimation in dynamic outdoor environments
スポンサーリンク
概要
- 論文の詳細を見る
This paper describes and compares three different approaches to estimate simultaneous localization and mapping (SLAM) in dynamic outdoor environments. SLAM has been intensively researched in recent years in the field of robotics and intelligent vehicles, many approaches have been proposed including occupancy grid mapping method (Bayesian, Dempster-Shafer and Fuzzy Logic), Localization estimation method (edge or point features based direct scan matching techniques, probabilistic likelihood, EKF, particle filter). In this paper, a number of promising approaches and recent developments in this literature have been reviewed firstly in this paper. However, SLAM estimation in dynamic outdoor environments has been a difficult task since numerous moving objects exist which may cause bias in feature selection problem. In this paper, we proposed a possibilistic SLAM with RANSAC approach and implemented with three different matching algorithms. Real outdoor experimental result shows the effectiveness and efficiency of our approach.
論文 | ランダム
- 本邦の臨床分離MRSAの薬剤感受性とバンコマイシンへテロ耐性株(hetero-VISA)の検出
- 国際インターンシップとビザについての一考察(I 論文・研究の部)
- サイドチャネル攻撃評価用自動測定ソフトウェアの開発
- 海外情報 米国のVISAトラベルカード
- 現代における民俗の活用に関する一考察--新潟県燕市の「越後くがみ山酒呑童子行列」を中心として