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Vehicle Damage Detection,
Polygon Annotation

Vehicle Damage Detection with Precision Polygon Annotations

Calendar12 January 2023
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Client's Challenge & Our Solution

A top-tier automotive company aimed to enhance its visual inspection AI model for accurate vehicle damage assessment. With 10,000 high-resolution images showcasing various damages, the client needed precise polygon annotations to delineate and categorize specific damage types. The task required exceptional accuracy and industry-specific expertise to capture intricate damage patterns, such as Scratches, Dents, Paint Chips, Broken Glass, and Bent Panels.

FutureBeeAI leveraged its proprietary annotation platform and domain expertise to deliver high-quality annotations. Our process ensured every image was labeled with meticulous attention to detail, enabling the AI model to learn and replicate real-world inspection scenarios.

Outcome & Features:

ArrowDelivered 10,000 professionally annotated images, meeting the client’s rigorous quality and accuracy benchmarks.
ArrowMaintained over 98% annotation precision through multi-layered quality checks over 70k annotations.
ArrowWith a team of 30 annotators, we successfully completed the project within 6 weeks.

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