An Outlook into the Future of Egocentric Vision
- URL: http://arxiv.org/abs/2308.07123v2
- Date: Wed, 7 Feb 2024 14:37:42 GMT
- Title: An Outlook into the Future of Egocentric Vision
- Authors: Chiara Plizzari, Gabriele Goletto, Antonino Furnari, Siddhant Bansal,
Francesco Ragusa, Giovanni Maria Farinella, Dima Damen, Tatiana Tommasi
- Abstract summary: This survey focuses on software models for egocentric vision, independent of any specific hardware.
The paper concludes with recommendations for areas of immediate explorations so as to unlock our path to the future always-on, personalised and life-enhancing egocentric vision.
- Score: 35.98763217828443
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: What will the future be? We wonder! In this survey, we explore the gap
between current research in egocentric vision and the ever-anticipated future,
where wearable computing, with outward facing cameras and digital overlays, is
expected to be integrated in our every day lives. To understand this gap, the
article starts by envisaging the future through character-based stories,
showcasing through examples the limitations of current technology. We then
provide a mapping between this future and previously defined research tasks.
For each task, we survey its seminal works, current state-of-the-art
methodologies and available datasets, then reflect on shortcomings that limit
its applicability to future research. Note that this survey focuses on software
models for egocentric vision, independent of any specific hardware. The paper
concludes with recommendations for areas of immediate explorations so as to
unlock our path to the future always-on, personalised and life-enhancing
egocentric vision.
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