Our paper on common-sense object-goal visual navigation is accepted to ICRA@40

[2024.07.18]

The following paper is accepted to the 40th Anniversary of the IEEE Conference on Robotics and Automation (ICRA@40)

Commonsense-Aware Object Value Graph for Object Goal Navigation by Hwiyeon Yoo, Yunho Choi, Jeongho Park, and Songhwai Oh

  • Abstract: Object goal navigation (ObjectNav) is the task of finding a target object in an unseen environment. It is one of the fundamental challenges in visual navigation as it requires both structural and semantic understanding. In this paper, we present OVG-Nav, a novel ObjectNav framework that leverages a topological graph structure called object value graph (OVG), which contains visual observations and commonsense prior knowledge. The high-level planning of OVG-Nav prioritizes subgoal nodes for exploration based on a metric called object value, which reflects the closeness to the target object. Here, we propose OVGNet, a model designed to predict the object values of each node of an OVG using observed features along with commonsense knowledge. The structure of high-level planning using OVG and low-level action decisions reduces sensitivity to accumulating sensor noises, leading to robust navigation performance. Experimental results show that OVG-Nav outperforms the baseline in success rate (SR) and success rate weighted by path length (SPL) in the MP3D dataset both in accurate sensing and noisy sensing. In addition, we show that the OVG-Nav can be transferred to the real-world robot successfully. 
  • Video