Skip to main content

Documentation Index

Fetch the complete documentation index at: https://docs.labellerr.com/llms.txt

Use this file to discover all available pages before exploring further.

At Labellerr, we continue improving annotation workflows to help AI teams work faster, maintain quality, and scale operations more efficiently. This latest update introduces improvements across annotation precision, review workflows, usability, and video handling. Here’s what’s new.

1. Auto-Bordering for Overlapping Annotations

Handling overlapping objects is a common challenge in computer vision annotation workflows, especially in dense industrial or manufacturing datasets. With this update, overlapping annotations can now share common annotation points during auto-bordering. Previously, annotators often had to manually create separate bordering points even when objects shared boundaries. The new enhancement reduces repetitive adjustments and helps create cleaner polygon annotations. Benefits:
  • Faster polygon annotation workflows
  • Better boundary consistency
  • Reduced manual correction effort
  • Improved accuracy in dense scenes

2. Accept or Reject Files Directly from View Mode

Admins can now accept or reject files directly from view mode without switching between interfaces. This simplifies the review process and helps teams manage large annotation projects more efficiently. Instead of navigating across multiple workflow stages, reviewers can now make validation decisions while reviewing the file itself. This enhancement is especially valuable for enterprise annotation operations handling large datasets and rapid review cycles. Benefits:
  • Faster QA workflows
  • Reduced navigation overhead
  • Improved review efficiency
  • Smoother project management at scale

3. Edit Files in View Mode

View mode now also supports direct editing and annotation. Users can make corrections or update annotations without leaving the review interface, creating a more seamless workflow experience. This reduces interruptions during QA and speeds up annotation refinement cycles. This is especially useful for projects involving iterative reviews and precise annotation adjustments. Benefits:
  • Faster annotation corrections
  • Reduced workflow switching
  • Improved reviewer productivity
  • Better collaboration between annotation and QA teams

4. Improved UI/UX for Annotation Attributes

We’ve enhanced the experience of adding attributes to annotations. Users can now continue interacting with the image while selecting attributes, making the workflow smoother and less disruptive. This helps annotators maintain visual focus during complex labeling tasks. The update is especially useful for multi-attribute and fine-grained annotation workflows. Benefits:
  • Better annotation flow
  • Reduced interruptions
  • Faster attribute assignment
  • Improved usability for complex datasets

5. Support for Larger Video Files in Annotation Projects

Annotation projects now support video uploads between 100MB and 500MB. This allows teams to work with larger and more realistic video datasets without excessive preprocessing or file splitting. Benefits:
  • Support for longer video sequences
  • Better context preservation across frames
  • Reduced preprocessing effort
  • Improved support for enterprise video workflows

How These Updates Help You

  • Greater Precision: Auto-bordering for overlapping annotations creates cleaner polygons and improves accuracy in dense scenes.
  • Faster Reviews: Accepting, rejecting, and editing files directly from view mode speeds up QA and reduces navigation overhead.
  • Cleaner Experience: Improved UI/UX for attributes allows annotators to maintain visual focus without disruptive interruptions.
  • Better Scalability: Support for larger video files lets enterprise teams handle longer sequences and preserve context across frames without excessive preprocessing.

Conclusive Thoughts

These updates are designed to improve efficiency, usability, and scalability across enterprise annotation pipelines. From smarter overlapping annotations and streamlined review actions to improved attribute workflows and expanded video support, each enhancement focuses on reducing operational friction while maintaining annotation quality. At Labellerr, we’ll continue building tools that help AI teams manage complex data annotation workflows with greater speed and precision. The Labellerr Team

FAQs

Q1. How does the new auto-bordering work for overlapping annotations? The new auto-bordering feature allows overlapping annotations to share common annotation points. This means annotators no longer have to manually create separate bordering points when objects share boundaries, reducing repetitive adjustments and creating cleaner polygons. Q2. Can I edit annotations directly during the review process? Yes. With this update, view mode supports both accepting/rejecting files and direct editing. Reviewers can make corrections or update annotations without leaving the review interface, which speeds up the refinement cycle. Q3. What is the new file size limit for video uploads? Annotation projects now support video uploads between 100MB and 500MB. This allows you to work with longer video sequences and preserve context without needing to split files.