Unlock the hidden value of your visual collections

Discover how Visual Search reveals hidden insights, streamlines image management, and keeps your data private and secure

Trusted by organizations managing millions of images and Video's

What is Visual Search by Datamachine?

Visual Search by Datamachine leverages scene detection, a cutting-edge technology that analyzes entire scenes in images and videos. Instead of focusing on individual objects, our technology understands the broader context—capturing relationships, patterns, and key elements within both photos and moving frames. This approach enables you to intuitively explore your visual collections, whether you’re searching for recurring themes, similar images, or specific objects within complex contexts. From untagged photo archives to extensive video collections, Visual Search by Datamachine transforms how you manage, analyze, and interpret your visual data.

What can you expect:

Simplify, discover, and enrich Your Visual Collection

Managing large visual collections can feel overwhelming. Visual Search by Datamachine simplifies your workflow and helps you unlock hidden value in your data:

  • Streamline deduplication: identify duplicates with ease
  • Find similar images: locate relate objects, series or patterns
  • Reveal hidden collections: make low-quality or unannotated images visible

Immediate results and no training needed

Get started instantly, unlike traditional tools our technology delivers immediate results without preparation:

  • Works on any image and video dataset, no training required
  • Handels collections of all sizes, from hundreds to millions of images or video's
  • Delivers fast, accurate results to save time and resources

Secure data and full Control

Your data is yours, and it stays that way. We prioritize privacy:

  • No big tech dependencies and in-house server possibility
  • In-house AI models

Have questions or just want to say hi?

Get in touch with the Datamachine team

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