Goal recognition is an important problem in many application domains (e.g., pervasive computing, intrusion detection, computer games, etc.). In many application scenarios it is important that goal recognition algorithms can recognize goals of an observed agent as fast as possible and with minimal domain knowledge. Hence, in this paper, we propose a hybrid method for online goal recognition that combines a symbolic planning landmark based approach and a data-driven goal recognition approach and evaluate it in a real-world cooking scenario. The empirical results show that the proposed method is not only significantly more efficient in terms of computation time than the state-of-the-art but also improves goal recognition performance. Furthermore, we show that the utilized planning landmark based approach, which was so far only evaluated on artificial benchmark domains, achieves also good recognition performance when applied to a real-world cooking scenario.
翻译:在许多应用领域(例如,普遍计算、入侵探测、计算机游戏等),目标确认是一个重要的问题。在许多应用设想中,目标确认算法必须能够尽可能快地和以最低限度的域知识来确认被观察的代理人的目标。因此,在本文件中,我们提出了在线目标确认的混合方法,将象征性的规划里程碑式方法与数据驱动的目标确认方法结合起来,并在现实世界的烹饪情景中加以评价。经验结果显示,拟议的方法不仅在计算时间方面比最新工艺效率高得多,而且提高了目标确认性能。此外,我们表明,利用的规划里程碑式方法(迄今为止仅对人造基准领域进行了评估),在应用到现实世界的烹饪情景时,也取得了良好的承认性表现。