Into the Unknown: Towards using Generative Models for Sampling Priors of Environment Uncertainty for Planning in Configuration Spaces
- URL: http://arxiv.org/abs/2510.11014v1
- Date: Mon, 13 Oct 2025 05:08:48 GMT
- Title: Into the Unknown: Towards using Generative Models for Sampling Priors of Environment Uncertainty for Planning in Configuration Spaces
- Authors: Subhransu S. Bhattacharjee, Hao Lu, Dylan Campbell, Rahul Shome,
- Abstract summary: Priors are vital for planning under partial observability, yet difficult to obtain in practice.<n>We present a probabilistic-based pipeline that leverages large-scale pretrained generative models to produce priors in a zero-shot manner.<n>We establish a Matterport3D benchmark of rooms partially visible through doorways, where a robot must navigate to an unobserved target object.
- Score: 28.37021202108478
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Priors are vital for planning under partial observability, yet difficult to obtain in practice. We present a sampling-based pipeline that leverages large-scale pretrained generative models to produce probabilistic priors capturing environmental uncertainty and spatio-semantic relationships in a zero-shot manner. Conditioned on partial observations, the pipeline recovers complete RGB-D point cloud samples with occupancy and target semantics, formulated to be directly useful in configuration-space planning. We establish a Matterport3D benchmark of rooms partially visible through doorways, where a robot must navigate to an unobserved target object. Effective priors for this setting must represent both occupancy and target-location uncertainty in unobserved regions. Experiments show that our approach recovers commonsense spatial semantics consistent with ground truth, yielding diverse, clean 3D point clouds usable in motion planning, highlight the promise of generative models as a rich source of priors for robotic planning.
Related papers
- ForecastOcc: Vision-based Semantic Occupancy Forecasting [16.699381591572163]
We present ForecastOcc, the first framework for vision-based semantic occupancy forecasting that predicts future occupancy states and semantic categories.<n>Our framework yields semantic occupancy forecasts for multiple horizons directly from past camera images, without relying on externally estimated maps.
arXiv Detail & Related papers (2026-02-08T15:16:06Z) - TGP: Two-modal occupancy prediction with 3D Gaussian and sparse points for 3D Environment Awareness [13.68631587423815]
3D semantic occupancy has rapidly become a research focus in the fields of robotics and autonomous driving environment perception.<n>Existing occupancy prediction tasks are modeled using voxel or point cloud-based approaches.<n>We propose a dual-modal prediction method based on 3D Gaussian sets and sparse points, which balances both spatial location and volumetric structural information.
arXiv Detail & Related papers (2025-03-13T01:35:04Z) - OPUS: Occupancy Prediction Using a Sparse Set [64.60854562502523]
We present a framework to simultaneously predict occupied locations and classes using a set of learnable queries.
OPUS incorporates a suite of non-trivial strategies to enhance model performance.
Our lightest model achieves superior RayIoU on the Occ3D-nuScenes dataset at near 2x FPS, while our heaviest model surpasses previous best results by 6.1 RayIoU.
arXiv Detail & Related papers (2024-09-14T07:44:22Z) - OccNeRF: Advancing 3D Occupancy Prediction in LiDAR-Free Environments [77.0399450848749]
We propose an OccNeRF method for training occupancy networks without 3D supervision.
We parameterize the reconstructed occupancy fields and reorganize the sampling strategy to align with the cameras' infinite perceptive range.
For semantic occupancy prediction, we design several strategies to polish the prompts and filter the outputs of a pretrained open-vocabulary 2D segmentation model.
arXiv Detail & Related papers (2023-12-14T18:58:52Z) - JRDB-Traj: A Dataset and Benchmark for Trajectory Forecasting in Crowds [79.00975648564483]
Trajectory forecasting models, employed in fields such as robotics, autonomous vehicles, and navigation, face challenges in real-world scenarios.
This dataset provides comprehensive data, including the locations of all agents, scene images, and point clouds, all from the robot's perspective.
The objective is to predict the future positions of agents relative to the robot using raw sensory input data.
arXiv Detail & Related papers (2023-11-05T18:59:31Z) - Implicit Occupancy Flow Fields for Perception and Prediction in
Self-Driving [68.95178518732965]
A self-driving vehicle (SDV) must be able to perceive its surroundings and predict the future behavior of other traffic participants.
Existing works either perform object detection followed by trajectory of the detected objects, or predict dense occupancy and flow grids for the whole scene.
This motivates our unified approach to perception and future prediction that implicitly represents occupancy and flow over time with a single neural network.
arXiv Detail & Related papers (2023-08-02T23:39:24Z) - Predicting Future Occupancy Grids in Dynamic Environment with
Spatio-Temporal Learning [63.25627328308978]
We propose a-temporal prediction network pipeline to generate future occupancy predictions.
Compared to current SOTA, our approach predicts occupancy for a longer horizon of 3 seconds.
We publicly release our grid occupancy dataset based on nulis to support further research.
arXiv Detail & Related papers (2022-05-06T13:45:32Z) - Adaptive Selection of Informative Path Planning Strategies via
Reinforcement Learning [6.015556590955814]
"Local planning" approaches adopt various spatial ranges within which next sampling locations are prioritized to investigate their effects on the prediction performance as well as incurred travel distance.
Experiments on use cases of temperature monitoring robots demonstrate that the dynamic mixtures of planners can not only generate sophisticated, informative plans but also ensure significantly reduced distances at no cost of prediction reliability.
arXiv Detail & Related papers (2021-08-14T21:32:33Z) - Risk-Averse MPC via Visual-Inertial Input and Recurrent Networks for
Online Collision Avoidance [95.86944752753564]
We propose an online path planning architecture that extends the model predictive control (MPC) formulation to consider future location uncertainties.
Our algorithm combines an object detection pipeline with a recurrent neural network (RNN) which infers the covariance of state estimates.
The robustness of our methods is validated on complex quadruped robot dynamics and can be generally applied to most robotic platforms.
arXiv Detail & Related papers (2020-07-28T07:34:30Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.