Machine Perception and Intelligent Robotics group (MAPIR), Department of System Engineering and Automation, Biomedical Research Institute of Malaga (IBIMA), University of Malaga, 29071 Málaga, Spain.
Sensors (Basel). 2018 Nov 28;18(12):4174. doi: 10.3390/s18124174.
This paper addresses the localization of a gas emission source within a real-world human environment with a mobile robot. Our approach is based on an efficient and coherent system that fuses different sensor modalities (i.e., vision and chemical sensing) to exploit, for the first time, the semantic relationships among the detected gases and the objects visually recognized in the environment. This novel approach allows the robot to focus the search on a finite set of potential gas source candidates (dynamically updated as the robot operates), while accounting for the non-negligible uncertainties in the object recognition and gas classification tasks involved in the process. This approach is particularly interesting for structured indoor environments containing multiple obstacles and objects, enabling the inference of the relations between objects and between objects and gases. A probabilistic Bayesian framework is proposed to handle all these uncertainties and semantic relations, providing an ordered list of candidates to be the source. This candidate list is updated dynamically upon new sensor measurements to account for objects not previously considered in the search process. The exploitation of such probabilities together with information such as the locations of the objects, or the time needed to validate whether a given candidate is truly releasing gases, is delegated to a path planning algorithm based on Markov decision processes to minimize the search time. The system was tested in an office-like scenario, both with simulated and real experiments, to enable the comparison of different path planning strategies and to validate its efficiency under real-world conditions.
本文针对在真实的人类环境中使用移动机器人定位气体排放源的问题进行了研究。我们的方法基于一个高效而连贯的系统,该系统融合了不同的传感器模态(即视觉和化学传感),首次利用环境中检测到的气体与视觉识别的物体之间的语义关系。这种新颖的方法使机器人能够将搜索范围缩小到一组有限的潜在气体源候选者(随着机器人的操作动态更新),同时考虑到在这个过程中涉及的物体识别和气体分类任务中不可忽略的不确定性。这种方法对于包含多个障碍物和物体的结构化室内环境特别有趣,能够推断物体之间以及物体与气体之间的关系。我们提出了一个概率贝叶斯框架来处理所有这些不确定性和语义关系,为候选者提供了一个有序的列表。根据新的传感器测量结果,该候选列表会动态更新,以考虑到搜索过程中未考虑到的物体。这种概率的利用,以及物体的位置或验证给定候选者是否真的在释放气体所需的时间等信息,被委托给基于马尔可夫决策过程的路径规划算法,以最小化搜索时间。该系统在类似于办公室的场景中进行了测试,包括模拟实验和真实实验,以比较不同的路径规划策略,并验证其在真实条件下的效率。