同时定位和映射
计算机科学
人工智能
对象(语法)
语义映射
计算机视觉
离群值
匹配(统计)
姿势
联想(心理学)
机器人
代表(政治)
Viola–Jones对象检测框架
移动机器人
模式识别(心理学)
数学
法学
统计
哲学
认识论
人脸检测
政治
面部识别系统
政治学
作者
Yanmin Wu,Yunzhou Zhang,Delong Zhu,Zhiqiang Deng,Wenkai Sun,Xin Chen,Jian Zhang
标识
DOI:10.1109/tro.2023.3273180
摘要
Object SLAM is considered increasingly significant for robot high-level perception and decision-making. Existing studies fall short in terms of data association, object representation, and semantic mapping and frequently rely on additional assumptions, limiting their performance. In this paper, we present a comprehensive object SLAM framework that focuses on object-based perception and object-oriented robot tasks. First, we propose an ensemble data association approach for associating objects in complicated conditions by incorporating parametric and nonparametric statistic testing. In addition, we suggest an outlier-robust centroid and scale estimation algorithm for modeling objects based on the iForest and line alignment. Then a lightweight and object-oriented map is represented by estimated general object models. Taking into consideration the semantic invariance of objects, we convert the object map to a topological map to provide semantic descriptors to enable multi-map matching. Finally, we suggest an object-driven active exploration strategy to achieve autonomous mapping in the grasping scenario. A range of public datasets and real-world results in mapping, augmented reality, scene matching, relocalization, and robotic manipulation have been used to evaluate the proposed object SLAM framework for its efficient performance.
科研通智能强力驱动
Strongly Powered by AbleSci AI