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Plugin
Type
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Supervisely / Agent

Supervisely Agent - is a small, but powerful task manager that allows to connect any computer (your office PC or cloud server) to the platform and use it for any computational tasks: neural network training/inference/deployment, training data preparation and many more.
supervisely/agent
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supervisely
a month ago

Supervisely / Images

Supported formats: images, directory with images
supervisely/import-images
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supervisely
a month ago

Supervisely / Supervisely

Supported formats: directory with entire Supervisely project, or meta.json + selected dataset folders.
supervisely/import-supervisely
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supervisely
a month ago

Supervisely / DTL

Allows to combine datasets, to make class mapping, filter objects and images, apply auto augmentations and so on ...
supervisely/dtl
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supervisely
a month ago

Supervisely / UNet v2

Lightweight NN architecture for multi-class semantic segmentation. It's fast to train and produces good results even with less training data.
supervisely/nn-unet-v2
TRAIN
INFERENCE
DEPLOY
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supervisely
a month ago

Supervisely / mIoU

Takes 2 (or 1) projects as input, for each pair of classes calculates IoU and calculates mIoU for all defined classes
supervisely/metric-miou
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supervisely
a month ago

Supervisely / YOLO v3

Based on Darknet framework (C++)
supervisely/nn-yolo-v3
TRAIN
INFERENCE
DEPLOY
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supervisely
a month ago

Supervisely / SmartTool

NN for interactive object segmentation. Allows to significantly speed up manual annotation. Can be customized for your specific task.
docker.deepsystems.io/supervisely/five/nn-smarttool
TRAIN
INFERENCE
DEPLOY
DEPLOY SMART
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supervisely
a month ago

Supervisely / DeepLab v3 Plus

State of the art NN for multi-class semantic segmentation.
supervisely/nn-deeplab-v3-plus
TRAIN
INFERENCE
DEPLOY
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supervisely
a month ago

Supervisely / Binary masks

Drag and drop two directories: 'img' - with images, 'ann' - ann with binary masks
supervisely/import-bin-masks
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supervisely
a month ago

Supervisely / Cityscapes

Drag and drop two directories: 'gtFine' and 'leftImg8bit'
supervisely/import-cityscapes
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supervisely
a month ago

Supervisely / KITTI

Import 'training' folder from KITTY Semantic Segmentation dataset
supervisely/import-kitti
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supervisely
a month ago

Supervisely / Mapillary

Drag and drop both folders 'training' and 'validation'
supervisely/import-mapillary
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supervisely
a month ago

Supervisely / Pascal VOC

To upload Pascal VOC Semnatic Segmentation dataset
supervisely/import-pascal
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supervisely
a month ago

Supervisely / Video

For each video will be created separate dataset. Frames are extracted with specific step.
supervisely/import-video
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supervisely
a month ago

Supervisely / TF Object Detection

Adapted version of The TensorFlow Object Detection Library. Only model graphs are taken from original repo. We keep all things as simple as possible.
supervisely/nn-tf-obj-det
TRAIN
INFERENCE
DEPLOY
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supervisely
a month ago

Supervisely / Mask R-CNN (Keras + TF)

Keras+Tensorflow implementation of Mask R-CNN
supervisely/nn-mask-rcnn-keras-tf
TRAIN
INFERENCE
DEPLOY
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supervisely
a month ago

Supervisely / DICOM

Import one or several dicom files with metainformation
supervisely/import-dicom
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supervisely
a month ago

Supervisely / Classification metrics

Accuracy, precision, recall, F-measure
supervisely/metric-class-metrics
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supervisely
a month ago

Supervisely / ResNet classifier

classification model
supervisely/nn-resnet-class
TRAIN
INFERENCE
DEPLOY
s
supervisely
a month ago

Supervisely / ICNet (pytorch)

Lightweight NN architecture for multi-class semantic segmentation. It is fast to train and produces good results even with less training data.
supervisely/nn-icnet
TRAIN
INFERENCE
DEPLOY
s
supervisely
a month ago

Supervisely / Mean Average Precision (mAP)

Takes 2 (or 1) projects as input, for each pair of classes calculates Average Precision and calculates mAP for all defined classes at a given Intersection over Union (IoU) threshold
supervisely/metric-map
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supervisely
a month ago

Supervisely / Precision and Recall

Takes 2 (or 1) projects as input, for each pair of classes calculates Precision and Recall and their mean values for all defined classes at a given Intersection over Union (IoU) threshold
supervisely/metric-precrec
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supervisely
a month ago

Supervisely / Confusion Matrix

Takes 2 (or 1) projects as input and calculates Confusion_Matrix for classes included in classes_mapping
supervisely/metric-confmat
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supervisely
a month ago

Supervisely / Links

Upload remote images by link. Just drag and drop several TXT files with links that are structured line-by-line
supervisely/import-links
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supervisely
10 days ago