Search Results for author: Vincent Frémont

Found 7 papers, 3 papers with code

Label-Efficient 3D Object Detection For Road-Side Units

no code implementations9 Apr 2024 Minh-Quan Dao, Holger Caesar, Julie Stephany Berrio, Mao Shan, Stewart Worrall, Vincent Frémont, Ezio Malis

We address this challenge by devising a label-efficient object detection method for RSU based on unsupervised object discovery.

3D Object Detection Autonomous Driving +3

Practical Collaborative Perception: A Framework for Asynchronous and Multi-Agent 3D Object Detection

1 code implementation4 Jul 2023 Minh-Quan Dao, Julie Stephany Berrio, Vincent Frémont, Mao Shan, Elwan Héry, Stewart Worrall

In this work, we devise a simple yet effective collaboration method that achieves a better bandwidth-performance tradeoff than prior state-of-the-art methods while minimizing changes made to the single-vehicle detection models and relaxing unrealistic assumptions on inter-agent synchronization.

3D Object Detection object-detection

Attention-based Proposals Refinement for 3D Object Detection

1 code implementation18 Jan 2022 Minh-Quan Dao, Elwan Héry, Vincent Frémont

This paper proposes a data-driven approach to ROI feature computing named APRO3D-Net which consists of a voxel-based RPN and a refinement stage made of Vector Attention.

3D Object Detection Autonomous Driving +3

A two-stage data association approach for 3D Multi-object Tracking

no code implementations21 Jan 2021 Minh-Quan Dao, Vincent Frémont

Multi-object tracking (MOT) is an integral part of any autonomous driving pipelines because itproduces trajectories which has been taken by other moving objects in the scene and helps predicttheir future motion.

3D Multi-Object Tracking 3D Object Detection +4

R-AGNO-RPN: A LIDAR-Camera Region Deep Network for Resolution-Agnostic Detection

no code implementations10 Dec 2020 Ruddy Théodose, Dieumet Denis, Thierry Chateau, Vincent Frémont, Paul Checchin

In this paper, R-AGNO-RPN, a region proposal network built on fusion of 3D point clouds and RGB images is proposed for 3D object detection regardless of point cloud resolution.

3D Object Detection Data Augmentation +4

Vision-Based Road Detection using Contextual Blocks

no code implementations3 Sep 2015 Caio César Teodoro Mendes, Vincent Frémont, Denis Fernando Wolf

Our starting point is the well-known machine learning approach, in which a classifier is trained to distinguish road and non-road regions based on hand-labeled images.

Autonomous Navigation Computational Efficiency +1

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