Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

RoboOcc: Enhancing the Geometric and Semantic Scene Understanding for Robots

About

3D occupancy prediction enables the robots to obtain spatial fine-grained geometry and semantics of the surrounding scene, and has become an essential task for embodied perception. Existing methods based on 3D Gaussians instead of dense voxels do not effectively exploit the geometry and opacity properties of Gaussians, which limits the network's estimation of complex environments and also limits the description of the scene by 3D Gaussians. In this paper, we propose a 3D occupancy prediction method which enhances the geometric and semantic scene understanding for robots, dubbed RoboOcc. It utilizes the Opacity-guided Self-Encoder (OSE) to alleviate the semantic ambiguity of overlapping Gaussians and the Geometry-aware Cross-Encoder (GCE) to accomplish the fine-grained geometric modeling of the surrounding scene. We conduct extensive experiments on Occ-ScanNet and EmbodiedOcc-ScanNet datasets, and our RoboOcc achieves state-of the-art performance in both local and global camera settings. Further, in ablation studies of Gaussian parameters, the proposed RoboOcc outperforms the state-of-the-art methods by a large margin of (8.47, 6.27) in IoU and mIoU metric, respectively. The codes will be released soon.

Zhang Zhang, Qiang Zhang, Wei Cui, Shuai Shi, Yijie Guo, Gang Han, Wen Zhao, Hengle Ren, Renjing Xu, Jian Tang• 2025

Related benchmarks

TaskDatasetResultRank
Indoor Occupancy PredictionOcc-ScanNet (val)
IoU (Overall)56.48
21
Embodied 3D Occupancy PredictionEmbodiedOcc-ScanNet
SC-IoU53.3
11
Occupancy PredictionEmbodiedOcc-ScanNet 1.0 (test)
Overall IoU53.3
10
Local Occupancy PredictionOcc-ScanNet Mini
Overall IoU57.25
7
Local Occupancy PredictionOcc-ScanNet
IoU56.48
7
Showing 5 of 5 rows

Other info

Follow for update