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arxiv:2509.12989

PANORAMA: The Rise of Omnidirectional Vision in the Embodied AI Era

Published on Sep 16
· Submitted by Chenfei Liao on Sep 18
#3 Paper of the day
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Abstract

Recent advancements in omnidirectional vision, driven by industrial and academic interest, have led to breakthroughs in generation, perception, and understanding, with the proposal of a new system architecture called PANORAMA.

AI-generated summary

Omnidirectional vision, using 360-degree vision to understand the environment, has become increasingly critical across domains like robotics, industrial inspection, and environmental monitoring. Compared to traditional pinhole vision, omnidirectional vision provides holistic environmental awareness, significantly enhancing the completeness of scene perception and the reliability of decision-making. However, foundational research in this area has historically lagged behind traditional pinhole vision. This talk presents an emerging trend in the embodied AI era: the rapid development of omnidirectional vision, driven by growing industrial demand and academic interest. We highlight recent breakthroughs in omnidirectional generation, omnidirectional perception, omnidirectional understanding, and related datasets. Drawing on insights from both academia and industry, we propose an ideal panoramic system architecture in the embodied AI era, PANORAMA, which consists of four key subsystems. Moreover, we offer in-depth opinions related to emerging trends and cross-community impacts at the intersection of panoramic vision and embodied AI, along with the future roadmap and open challenges. This overview synthesizes state-of-the-art advancements and outlines challenges and opportunities for future research in building robust, general-purpose omnidirectional AI systems in the embodied AI era.

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Paper submitter

This paper presents a draft overview of the emerging field of omnidirectional vision in the context of embodied AI

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