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Decision theoretic search for small objects through integrating far and near cues

机译:决策理论上通过集成远和靠近线索来搜索小物体

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In an object search scenario with several small objects spread over a large indoor environment, the robot cannot infer about all of them at once. Pruning the search space is highly desirable in such a case. It has to actively select a course of actions to closely examine a selected set of objects. Here, we model the inferences about far away objects and their viewpoint priors into a decision analytic abstraction to prioritize the waypoints. By selecting objects of interest, a potential field is built over the environment by using Composite Viewpoint Object Potential (CVOP) maps. A CVOP is built using VOP, a framework to identify discriminative viewpoints to recognize small objects having distinctive features only in specific views. Also, a CVOP helps to clearly disambiguate objects which look similar from far away. We formulate a Decision Analysis Graph (DAG) over the above information, to assist the robot in actively navigating and maximize the reward earned. This optimal strategy increases search reliability, even in the presence of similar looking small objects which induce confusion into the agent and simultaneously reduces both time taken and distance travelled. To the best of our knowledge, there is no current unified formulation which addresses indoor object search scenarios in this manner. We evaluate our system over ROS using a TurtleBot mounted with a Kinect.
机译:在一个具有几个小物体的对象搜索场景,在大型室内环境中传播,机器人立即无法推断出所有这些。在这种情况下,非常希望搜索空间修剪。它必须主动选择一门课程来密切检查选定的对象。在这里,我们将关于远处的对象的推论和他们的观点前导者模拟到决策分析抽象,以优先考虑航路点。通过选择感兴趣的对象,通过使用复合视点对象潜力(CVOP)映射来构建潜在字段。使用VOP构建CVOP,该框架是识别判别观点以识别仅在特定视图中具有独特特征的小对象。此外,CVOP有助于清楚消除从遥远的物品看起来相似的物品。我们通过上述信息制定决策分析图(DAG),以协助机器人积极导航并最大限度地提高所获得的奖励。这种最佳策略增加了搜索可靠性,即使在存在类似看起来的小物体中,诱导困惑进入代理并同时减少所需的时间和行驶的距离。据我们所知,目前没有目前的统一制定,以这种方式解决了室内对象搜索方案。我们使用安装有Kinect的Turtlebot来评估我们的系统对ROS的系统。

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