Basic Image labeling tool
complete solution for image annotation
complete solution for medical DICOM annotation
Label volumetric medical scans from CT and MRI in 2D or 3D with a professional viewer, advanced editing tools, and AI enhancements.
🔥🔥🔥 Check out our quick YouTube overview and the article on how to use the toolset in our blog:
Full variety of instruments from our best-in-class image labeling toolbox — plus, extra tools for medical imaging, like window adjustments.
Supervisely provides a well-known intuitive interface to view and manipulate volumetric medical images in multiple projections and slices with expert features medical professionals are used to.
Navigation through slices in multiple projections |
Rotate, flip, invert colors |
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Multi-window layout |
Crosshair tool |
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Windowing, windowing presets |
Perspective 3D view panel |
Colormaps |
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We believe professional tools don't have to be complicated.
Essential tools for annotation of multi-slice series in coronal, sagittal, and axial planes.
Multi-slice annotation objects |
Building 3D volumes from 2D figures |
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Tagging |
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More features for increased efficiency and productivity.
Hotkeys |
Restore mode |
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Companies working with protected health information provide extra requirements when it comes to user information privacy, data security, and organization policies.
Our platform and team will help you continually maintain HIPAA compliance with build privacy and security policies, including:
To better understand how Supervisely protects your data and ensures user security, please see our security and permissions page — or feel free to get in touch with us and chat about it with our experts!
complete solution for image annotation
complete solution for image annotation with advanced features
complete solution for LiDAR annotation with photo context
complete solution for video annotation
complete solution for LiDAR episodes annotation with photo context