| Founder of Estimote, Inc. (YC S13) here — we do beacons. In Project Aria video, they claim to have installed beacons at an airport to enable indoor location, only to dismiss it as something that "doesn't scale." Instead, they say they "trained" an AI model using vision from glasses, allowing for vision-based localization. So, here’s an honest question: which approach is actually easier, more cost-effective, and energy-efficient? 1) Deploying 100 or even 1,000 wireless, battery-operated beacons that last 5–7 years—something a non-tech person can set up in a day or two. 2) Training an AI model for each airport, then constantly burning compute power from camera-equipped glasses or phones that barely last a few hours. Thoughts? |
Really it's more like three questions.
1. Easier? I guess that depends how you define ease, but it largely depends on what resources you have available to you. If I'm Meta and I already have a ton of compute and AI training expertise but don't have relationships with all of the airports, stadiums, etc., their approach is probably easier. You'd have to spin up new teams of people all over the world to get beacons everywhere you want them.
2. Cost-effective? I don't know enough about the costs of your solution to give an accurate answer here, but again it just seems like they're probably already spending resources training models on a huge number of images of the world, so maybe not a lot of incremental cost here.
3. Cost efficient? I would assume your approach wins here.