Foveo — Computer Vision Platform for Detection, Tracking & Inspection
Computer Vision Platform

Computer vision
for the physical world.

Foveo turns any camera into a real-time sensor. Detect, classify, segment, track, and read objects with production accuracy — deployed at the edge or in the cloud, in days not quarters.

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Interactive preview · switch modes above · drop your own scene to overlay detections

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01 / Foundations

What is computer vision?

Computer vision is the branch of artificial intelligence that teaches machines to interpret images and video the way people do — finding, classifying, locating, and tracking objects inside visual data.

Foveo packages that capability into a deployable platform: connect a camera, choose a task, and turn raw pixels into structured, queryable events your systems can act on — in real time.

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02 / Pipeline

From pixels to production in four steps

Explore the platform →
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Impact estimator

What could automated vision return?

Drag the sliders to your reality. It's a rough model — we'll build a precise one on your real numbers during a demo.

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Model this on my numbers

Illustrative model — assumes ~70% inspection-labor reallocation and ~90% fewer escaped defects over 260 working days. Your real figures will differ.

03 / Industries

Built for teams that run on cameras

All industries →
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Case study · Manufacturing

Northwind Components cut escaped defects by 94% with automated visual inspection

A single Foveo edge node inspects 1,200 parts per minute across three lines, flagging surface defects human inspectors missed — and learning from every correction.

Read the case study
defect 0.97
scratch 0.88
Client signal

Teams that stopped guessing

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04 / FAQ

Computer vision, answered

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Put your cameras to work

Bring a use case and a few sample images. We'll show you a working detection model on your data inside the first call.