Object Goal Navigation (ObjectNav) task is to navigate an agent to an object instance in unseen environments. The traditional navigation paradigm plans the shortest path on a pre-built map. Inspired by this, we propose an object goal navigation framework, which could directly perform path planning based on an estimated distance map. Specifically, our model takes a birds-eye-view semantic map as input, and estimates the distance from the map cells to the target object based on the learned prior knowledge. With the estimated distance map, the agent could explore the environment and navigate to the target objects based on either human-designed or learned navigation policy. Empirical results in visually realistic simulation environments show that the proposed method outperforms a wide range of baselines on success rate and efficiency.
翻译:目标导航( ObjectNav) 的任务是在未知环境中将一个代理物导航到一个对象实例。 传统的导航模式计划预建地图上最短的路径。 受此启发, 我们提议了一个目标导航框架, 该框架可以直接根据估计的远距地图进行路径规划。 具体地说, 我们的模型将鸟眼视语义地图作为输入, 根据所学的知识估计地图单元格与目标对象的距离。 使用估计的远距图, 该代理物可以探索环境, 并根据人类设计或学习的导航政策向目标对象导航。 视觉现实的模拟环境的经验显示, 拟议的方法在成功率和效率方面超过了广泛的基线 。