PoCo: Point Context Cluster for RGBD Indoor Place Recognition
Jing Liang, zhuo deng, Zheming Zhou, Omid Ghasemalizadeh, Dinesh Manocha, Min Sun, CHENG-HAO KUO, Arnab Sen
Abstract
We present a novel end-to-end algorithm (PoCo) for the indoor RGB-D place recognition task, aimed at iden- tifying the most likely match for a given query frame within a reference database. The task presents inherent challenges attributed to the constrained field of view and limited range of perception sensors. We propose a new network architecture, which generalizes the recent Context of Clusters (CoCs) to extract global descriptors directly from the noisy point clouds through end-to-end learning. Moreover, we develop the archi- tecture by integrating both color and geometric modalities into the point features to enhance the global descriptor representa- tion. We conducted evaluations on public datasets ScanNet-PR and ARKit with 807 and 5047 scenarios, respectively. PoCo achieves SOTA performance: on ScanNet-PR, we achieve R@1 of 64.63%, a 5.7% improvement from the best-published result CGis (61.12%); on Arkit, we achieve R@1 of 45.12%, a 13.3% improvement from the best-published result CGis (39.82%). In addition, PoCo shows higher efficiency than CGis in inference time (1.75X-faster), and we demonstrate the effectiveness of PoCo in recognizing places within a real-world laboratory environment. Video: https://youtu.be/D8dObAeMiCw;