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Main Authors: Goyal, Bhavya, Gutierrez-Barragan, Felipe, Lin, Wei, Velten, Andreas, Li, Yin, Gupta, Mohit
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.00169
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author Goyal, Bhavya
Gutierrez-Barragan, Felipe
Lin, Wei
Velten, Andreas
Li, Yin
Gupta, Mohit
author_facet Goyal, Bhavya
Gutierrez-Barragan, Felipe
Lin, Wei
Velten, Andreas
Li, Yin
Gupta, Mohit
contents LiDAR-based 3D sensors provide point clouds, a canonical 3D representation used in various scene understanding tasks. Modern LiDARs face key challenges in several real-world scenarios, such as long-distance or low-albedo objects, producing sparse or erroneous point clouds. These errors, which are rooted in the noisy raw LiDAR measurements, get propagated to downstream perception models, resulting in potentially severe loss of accuracy. This is because conventional 3D processing pipelines do not retain any uncertainty information from the raw measurements when constructing point clouds. We propose Probabilistic Point Clouds (PPC), a novel 3D scene representation where each point is augmented with a probability attribute that encapsulates the measurement uncertainty (or confidence) in the raw data. We further introduce inference approaches that leverage PPC for robust 3D object detection; these methods are versatile and can be used as computationally lightweight drop-in modules in 3D inference pipelines. We demonstrate, via both simulations and real captures, that PPC-based 3D inference methods outperform several baselines using LiDAR as well as camera-LiDAR fusion models, across challenging indoor and outdoor scenarios involving small, distant, and low-albedo objects, as well as strong ambient light. Our project webpage is at https://bhavyagoyal.github.io/ppc .
format Preprint
id arxiv_https___arxiv_org_abs_2508_00169
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Robust 3D Object Detection using Probabilistic Point Clouds from Single-Photon LiDARs
Goyal, Bhavya
Gutierrez-Barragan, Felipe
Lin, Wei
Velten, Andreas
Li, Yin
Gupta, Mohit
Computer Vision and Pattern Recognition
LiDAR-based 3D sensors provide point clouds, a canonical 3D representation used in various scene understanding tasks. Modern LiDARs face key challenges in several real-world scenarios, such as long-distance or low-albedo objects, producing sparse or erroneous point clouds. These errors, which are rooted in the noisy raw LiDAR measurements, get propagated to downstream perception models, resulting in potentially severe loss of accuracy. This is because conventional 3D processing pipelines do not retain any uncertainty information from the raw measurements when constructing point clouds. We propose Probabilistic Point Clouds (PPC), a novel 3D scene representation where each point is augmented with a probability attribute that encapsulates the measurement uncertainty (or confidence) in the raw data. We further introduce inference approaches that leverage PPC for robust 3D object detection; these methods are versatile and can be used as computationally lightweight drop-in modules in 3D inference pipelines. We demonstrate, via both simulations and real captures, that PPC-based 3D inference methods outperform several baselines using LiDAR as well as camera-LiDAR fusion models, across challenging indoor and outdoor scenarios involving small, distant, and low-albedo objects, as well as strong ambient light. Our project webpage is at https://bhavyagoyal.github.io/ppc .
title Robust 3D Object Detection using Probabilistic Point Clouds from Single-Photon LiDARs
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.00169