CVAINov 11, 2023

Aria-NeRF: Multimodal Egocentric View Synthesis

arXiv:2311.06455v25 citationsh-index: 11
Originality Synthesis-oriented
AI Analysis

This work provides a dataset to accelerate research in egocentric view synthesis and multimodal scene modeling for VR/AR and robotics applications, but it is incremental as it builds on existing NeRF-like methods without new algorithmic contributions.

The authors tackled the problem of creating rich, multimodal scene models from egocentric data by introducing a comprehensive dataset with RGB images, eye-tracking, audio, IMU, and other sensors, collected using Meta Aria Glasses, to support research in VR/AR and robotics.

We seek to accelerate research in developing rich, multimodal scene models trained from egocentric data, based on differentiable volumetric ray-tracing inspired by Neural Radiance Fields (NeRFs). The construction of a NeRF-like model from an egocentric image sequence plays a pivotal role in understanding human behavior and holds diverse applications within the realms of VR/AR. Such egocentric NeRF-like models may be used as realistic simulations, contributing significantly to the advancement of intelligent agents capable of executing tasks in the real-world. The future of egocentric view synthesis may lead to novel environment representations going beyond today's NeRFs by augmenting visual data with multimodal sensors such as IMU for egomotion tracking, audio sensors to capture surface texture and human language context, and eye-gaze trackers to infer human attention patterns in the scene. To support and facilitate the development and evaluation of egocentric multimodal scene modeling, we present a comprehensive multimodal egocentric video dataset. This dataset offers a comprehensive collection of sensory data, featuring RGB images, eye-tracking camera footage, audio recordings from a microphone, atmospheric pressure readings from a barometer, positional coordinates from GPS, connectivity details from Wi-Fi and Bluetooth, and information from dual-frequency IMU datasets (1kHz and 800Hz) paired with a magnetometer. The dataset was collected with the Meta Aria Glasses wearable device platform. The diverse data modalities and the real-world context captured within this dataset serve as a robust foundation for furthering our understanding of human behavior and enabling more immersive and intelligent experiences in the realms of VR, AR, and robotics.

Foundations

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