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Starts 5 June 2026 11:01

Ends 5 June 2026

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Annotate and Analyze Objects for Vision

Master quality-controlled annotation processes, bounding box reviews, and dataset consistency checks using IoU-based audits to build reliable vision datasets and configure detection models.
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2 hours 8 minutes

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Overview

This short course shows you how to build reliable vision datasets and configure detection models with confidence. You’ll learn how to run a quality-controlled annotation process, review bounding boxes, coach annotators, and check dataset consistency using IoU-based audits.

You’ll also explore how to analyze object sizes with clustering to generate anchor box parameters for models like YOLOv8. Through compact videos, guided readings, and hands-on exercises, you’ll practice using tools such as CVAT and Python notebooks to complete tasks common in production vision teams.

By the end, you’ll be able to create a clean bounding-box dataset and use real measurements to tune model anchors—skills that support robust, scalable computer-vision pipelines.

Syllabus

  • Annotate and Analyze Objects for Vision
  • This short course shows you how to build reliable vision datasets and configure detection models with confidence. You’ll learn how to run a quality-controlled annotation process, review bounding boxes, coach annotators, and check dataset consistency using IoU-based audits. You’ll also explore how to analyze object sizes with clustering to generate anchor box parameters for models like YOLOv8.

Taught by

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Subjects

Artificial Intelligence