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Main Authors: Straub, Julian, DeTone, Daniel, Shen, Tianwei, Yang, Nan, Sweeney, Chris, Newcombe, Richard
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.10224
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author Straub, Julian
DeTone, Daniel
Shen, Tianwei
Yang, Nan
Sweeney, Chris
Newcombe, Richard
author_facet Straub, Julian
DeTone, Daniel
Shen, Tianwei
Yang, Nan
Sweeney, Chris
Newcombe, Richard
contents The advent of wearable computers enables a new source of context for AI that is embedded in egocentric sensor data. This new egocentric data comes equipped with fine-grained 3D location information and thus presents the opportunity for a novel class of spatial foundation models that are rooted in 3D space. To measure progress on what we term Egocentric Foundation Models (EFMs) we establish EFM3D, a benchmark with two core 3D egocentric perception tasks. EFM3D is the first benchmark for 3D object detection and surface regression on high quality annotated egocentric data of Project Aria. We propose Egocentric Voxel Lifting (EVL), a baseline for 3D EFMs. EVL leverages all available egocentric modalities and inherits foundational capabilities from 2D foundation models. This model, trained on a large simulated dataset, outperforms existing methods on the EFM3D benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2406_10224
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle EFM3D: A Benchmark for Measuring Progress Towards 3D Egocentric Foundation Models
Straub, Julian
DeTone, Daniel
Shen, Tianwei
Yang, Nan
Sweeney, Chris
Newcombe, Richard
Computer Vision and Pattern Recognition
The advent of wearable computers enables a new source of context for AI that is embedded in egocentric sensor data. This new egocentric data comes equipped with fine-grained 3D location information and thus presents the opportunity for a novel class of spatial foundation models that are rooted in 3D space. To measure progress on what we term Egocentric Foundation Models (EFMs) we establish EFM3D, a benchmark with two core 3D egocentric perception tasks. EFM3D is the first benchmark for 3D object detection and surface regression on high quality annotated egocentric data of Project Aria. We propose Egocentric Voxel Lifting (EVL), a baseline for 3D EFMs. EVL leverages all available egocentric modalities and inherits foundational capabilities from 2D foundation models. This model, trained on a large simulated dataset, outperforms existing methods on the EFM3D benchmark.
title EFM3D: A Benchmark for Measuring Progress Towards 3D Egocentric Foundation Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.10224