Autonomous robot operation in unstructured and unknown environments requires efficient techniques for mapping and exploration using streaming range and visual observations. Information-based exploration techniques, such as Cauchy-Schwarz quadratic mutual information (CSQMI) and fast Shannon mutual information (FSMI), have successfully achieved active binary occupancy mapping with range measurements. However, as we envision robots performing complex tasks specified with semantically meaningful concepts, it is necessary to capture semantics in the measurements, map representation, and exploration objective. This work presents Semantic octree mapping and Shannon Mutual Information (SSMI) computation for robot exploration. We develop a Bayesian multi-class mapping algorithm based on an octree data structure, where each voxel maintains a categorical distribution over semantic classes. We derive a closed-form efficiently-computable lower bound of the Shannon mutual information between a multi-class octomap and a set of range-category measurements using semantic run-length encoding of the sensor rays. The bound allows rapid evaluation of many potential robot trajectories for autonomous exploration and mapping. We compare our method against state-of-the-art exploration techniques and apply it in a variety of simulated and real-world experiments.
翻译:在无结构的和未知的环境中自主的机器人操作需要利用流流分布和视觉观测来进行测绘和勘探的高效技术。基于信息的勘探技术,如Cauchy-Schwarz 夸夸斯河相互信息(CASQMI)和香农相互快速信息(FSMI)等,已经成功地实现了以测距法进行积极的二进制占用性绘图。然而,由于我们设想机器人在测量、图示和勘探目标中执行具有地震意义概念的复杂任务,因此有必要捕捉测测量、地图代表、和勘探目标中的语义学。这项工作为机器人勘探提供了Smantic ottree 和香农相互信息(SSMI) 的计算。我们开发了一种基于八进制数据结构的贝氏多级多级测绘算法,其中每个 voxel 都对语系分类进行绝对分布。我们用一种封闭式的高效可调低调的香农相互信息, 在一个多级的奥图图和一组使用感测射线的语-长调调调的测算法。我们对照了各种探索和模拟世界实验方法。我们对各种探索技术进行了比较。</s>