Indoor Mapping Startups funded by Y Combinator (YC) 2026

May 2026

Browse 2 of the top Indoor Mapping startups funded by Y Combinator.

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  • Estimote, Inc.
    Estimote, Inc.
    Y Combinator LogoS2013
    Active • 40 employees • Kraków, Poland
    Estimote, Inc. is the creator of SpaceTimeOS, a revolutionary operating system installed directly on physical spaces to make them programmable and interactive. Small sensors are attached to walls and items. They talk to each other and communicate with with servers. A digital copy of the physical space is created in the cloud, allowing for inch-precise and real-time tracking of assets, people, and vehicles. When they move or interact with each other pre-programmed actions are triggered as defined in the apps "installed" in different rooms or places. Apps can be downloaded from the marketplace of create by developers using JavaScript and a robust API. The system utilizes wireless technologies such as Bluetooth and Ultra Wideband to automate processes and track the movement of objects. SpaceTimeOS allows for the creation of smart workplace applications and the digital twinning of entire businesses and supply chains, as well as the blending of physical and digital data.
    developer-tools
    indoor-mapping
    iot
  • Jido Maps
    Jido Maps
    Y Combinator LogoW2018
    Acquired • 6 employees • Berkeley, CA, USA
    We help teams that may or may not have machine learning expertise quickly turn their data into deployed computer vision models. Example applications include security camera monitoring, automating data entry, interpreting web scraped images, validated user photo inputs, augmented reality and mobile product scanning. If you have visual or scanned data that you wish your software could interpret at scale, we can turn around a first proof of concept in under a week. Reach out and see how computer vision can change your business.
    deep-learning
    indoor-mapping
    machine-learning
    computer-vision