Basic Image labeling tool
complete solution for image annotation
The most popular applications among them all
complete solution for image annotation
complete solution for image annotation with advanced features
Drag and drop images to Supervisely, supported formats: .jpg, .jpeg, jpe, .mpo, .bmp, .png, .tiff, .tif, .webp, .nrrd
complete solution for video annotation
complete solution for LiDAR annotation with photo context
For semantic and instance segmentation tasks
images and JSON annotations
Images with corresponding annotations
complete solution for LiDAR episodes annotation with photo context
Import Videos without annotations to Supervisely
Import pointclouds in PCD format without annotations
Export pointclouds project and prepares downloadable tar archive
Transform project to YOLO v5 format and prepares tar archive for download
Export videos project and prepares downloadable tar archive
Import images from cloud (Google Cloud Storage, Amazon S3, Microsoft Azure, ...)
State of the art object segmentation model in Labeleing Interface
Transform YOLO v5 format to supervisely project
complete solution for medical DICOM annotation
Upload images using .CSV file
Converts Supervisely to COCO format and prepares tar archive for download
serve and use in videos annotator
Tag segments (begin and end) on single or multiple videos in dual-panel view
Batched smart labeling tool for Images
Export only labeled items and prepares downloadable tar archive
Dashboard to configure and monitor training
Import images with binary masks as annotations
to TorchScript and ONNX formats
Import videos from cloud (Google Cloud Storage, Amazon S3, Microsoft Azure, ...)
Converts Supervisely Project to Pascal VOC format
Clone project or dataset to selected workspace or project, works with all project types: images / videos / 3d / dicom
Import videos with annotations in Supervisely format
Download activity as csv file
Convert DICOM data to nrrd format and creates a new project with images grouped by selected metadata
Import Pointcloud Episodes with Annotations and Photo context
Downloads videos by URLs and uploads them to Supervisely Storage
Use deployed neural network in labeling interface
NN Inference on images in project or dataset
Dashboard to configure, start and monitor training
Visualize and build augmentation pipeline with ImgAug
Import pointclouds without annotations in .ply format from Team Files
Deploy model as REST API service
Merge selected datasets with images or videos into a single one
Creates images project from video project
Import public or custom data in Pascal VOC format to Supervisely
Converts shapes of classes (e.g. polygon to bitmap) and all corresponding objects
Read every n-th frame and save to images project
Detailed statistics for all classes in images project
Assigns tags (train/val) to images. Training apps will use these tags to split data.
Connect your remote storage and import data without duplication. Data is stored on your server but visible in Supervisely
Upload images by reading links (Google Cloud Storage) from CSV file
Total number of labeling actions and annotated unique images in a time interval
Generate synthetic data for classification of retail products on grocery shelves
Match image tag with CSV columns and add row values to image
Dashboard to configure, start and monitor training
Export project or dataset in Supervisely pointcloud episode format
Interactive Confusion matrix, mAP, ROC and more
Prepare training data for SmartTool
First Time Through ratio shows how many items labeler annotated right the first time (i.e. reviewer accepted his work on first round).
Run Jupyterlab server on your computer with Supervisely Agent and access it from anywhere
Converts Supervisely annotations to Cityscapes format and prepares downloadable tar archive
Objects with specific tag will be treated as reference items
Merge multiple classes with same shape to a single one
SmartTool integration of Efficient Interactive Segmentation (EISeg)
Tags and object classes can be customized
Deploy model as REST API service
Synthesize videos on annotated data
Only instance admin has permissions to run it
Import Metadata for Images in Project
Run 3D Detection and tracking algorithm on pointclouds or pointcloud episodes project
Assign tags to images using example images
Create foreground mask from alpha channel of image
Import Pointcloud Episodes from KITTI-360 format
Export project or dataset in Supervisely volumes format
Converts COCO format to Supervisely
Import volumes in DICOM and NRRD formats without annotations
Import LAS/LAZ format files to Supervisely 3D point cloud labeling tool
interactive metrics analysis
Merge images and labels that were split by sliding window before
Filters images and provides results in selected format
Export images in DOTA format and prepares downloadable archive
Converts Supervisely Pointcloud format to KITTI 3D
Creates presentation mp4 file based on labeled video
NN Inference on videos in project or dataset
Label images using updatable Reference Database
Application imports kaggle dataset 'Movie genre from its poster' as supervisely project
Dashboard to configure, start and monitor training
Template application to serve custom detection models
Use metric learning models to classify images
Dashboard to configure, start and monitor training
Filter objects and tags by user and copy them to working area
Explore images for every combination of tags pairs in co-occurrence table
Copies images + annotations + images metadata
Group items by selected columns from CSV catalog
Use neural network in labeling interface to classify images and objects
Import videos by urls provided in text file
Dashboard to configure, start and monitor training
Label videos for Action Recognition task
Convert .CSV catalog to Images Project
Deploy model as REST API service
Generate synthetic data: flying foregrounds on top of backgrounds
General statistics for all labeling jobs in team
Import Cityscapes to Supervisely
Import Supervisely volumes project with annotations
Converts shapes of classes on videos (e.g. polygon to bitmap) and all corresponding objects
Put images with labels into collage and renders comparison videos
Deploy model as REST API service
Calculate embeddings for images project
Import Pointcloud Project with Annotations and Photo context in Supervisely format
Tag segments (begin and end) with custom attributes on single or multiple videos in dual-panel view
Image Pixel Classification using ilastik
Import images groups connected via user defined tag
Deploy model as REST API service
Detailed statistics and distribution of object sizes (width, height, area)
Review images annotations object by object with ease
Visual diff and merge tool helps compare project tags and classes
Configure, preview and split images and annotations with sliding window
This app perspective transforms and warps your images using qr code in them.
Visual diff and merge tool helps compare images in two projects
The number of objects, figures and frames for every class for every dataset
Saves tag to images mapping to a json file
Explore images for every combination of classes pairs in co-occurrence table
Extract video fragment to selected project or dataset
Deploy model as REST API service
Deploy model as REST API service
Creates video project from images project
Evaluate your classification model
Split "AnyShape" classes to classes with strictly defined shapes (polygon, bitmap, ...)
Converts KITTI 3D format to Supervisely pointcloud format
Analyse videos labeled for Action Recognition task
for both images and their annotations
Invite users to team
Used to create infinite task for debug
Convert classes to bitmap and rasterize objects without intersections
Explore images with certain number of objects of specific class
Export Images Metadata from Project
Label and Review videos for Action Recognition task
label project images or objects using NN
Creates new project with cropped objects
Creates sequence of connected point clouds with tracklets
Deploy model as REST API service
Slice volumes to 2d images
Puts YouTube logo on all images in directory
Rotates images along with the annotations in the dataset
Label project images using detector and pose estimator
Label project images using detector and classify predicted boxes
Binds nested objects into groups
Dashboard to configure, start and monitor training
Create new object classes from tags associated with objects
Dashboard to configure, start and monitor training
Converts COCO Keypoints format to Supervisely
Edit tags of each object on image
Preview images as a grid gallery
Simple integration of NN training with tensorboard support.
Creates video from images in dataset with selected frame rate and configurable label opacity
Recommends matching items from the catalog
Calculate and visualize embeddings
Batched smart labeling tool for Videos
Rename "Key:Value" tags to key_value (fruit: lemon -> fruit_lemon)
Convert each class name to tag associated with objects, and merge existing classes into single one
Deploy interpolation method as REST API service
Open metrics in tensorboard
Export project to Google Cloud Storage, Amazon S3, Microsoft Azure, ...
Slicer 3D algorithms for volume interpolation
Convert polygon and bitmap labels to semantic segmentation
Remove temporary files from Team files
Import volumes from cloud (Google Cloud Storage, Amazon S3, Microsoft Azure, ...)
Split one or multiple datasets into parts
Google landmarks challenge models
Build labels distribution heatmap for dataset.
Annotate Project using Queues
Import Volumes with .nrrd masks to Supervisely
Add dataset name tag to all images in project or dataset
Downloads images from the Flickr to the dataset.
Demonstrates how to turn your python script into Supervisely App
Change video framerate with preserving duration (recodes video)
Convert all labels in the project or dataset to rotated bounding boxes
Detailed statistics for all classes in pointcloud or episodes project
Import selected videos from Team Files to selected destination
template for your headless app
Export volume project to Google Cloud Storage, Amazon S3, Microsoft Azure, ...
Prints progress and then raises error
nocode app that ignores soft stop
serve and use in videos annotator
Prepare examples for products from catalog
Create a new empty project with a meta of original project
Supports multi-user mode
Review and correct tags (supports multi-user mode)
All you need to work with YOLOv5
Training, inference, ai-assisted labeling, synthetic data and more
Training, inference, data exploration, synthetic data, and more
Solve Instance Segmentation tasks
Image project with person instances
Labeled roads (sample: 100 images, full version: 1000 images)
6 images with annotated lemons and kiwifruits
594 unlabeled images
Labeled images of products on the shelve: snacks, chips, crisps
10 images with labeled road
Sample images project without labels
What breed is this cat? demo for visual tagging app
Unlabeled images: sunflower / pumpkin (peeled + unpeeled) / mix