Is this your app? Claim this page to add your own description, links and contact info. It's free. →

RectLabel Pro

RectLabel Pro at Mac App Store analyse

Ryo Kawamura
0 ratings · Power index: 100
Version 2026.04.02
Size 0 Bytes
Updated 2 weeks ago
Released 12 Dec 2019

How do you feel about this app?

Screenshots

Description

RectLabel is an offline image annotation tool for object detection and segmentation. Key features: Using text and box prompts of Segment Anything Model 3, multiple objects are labeled at once Label polygons and pixels using Segment Anything Model 2 Label polygons and pixels using Cellpose model Label bounding boxes using Tracking model Automatic labeling using Core ML models including RF-DETR and YOLO26 Automatic text recognition for lines and words Label cubic bezier curves, line segments, and points Label oriented bounding boxes in aerial images Label keypoints with a skeleton Label pixels with brushes and superpixels Settings for objects, attributes, hotkeys, and labeling fast Search object, attribute, image names, and memo in a gallery view Export to YOLO, COCO, CreateML, and DOTA formats Export indexed color mask image and grayscale mask images Video to image frames, augment images, etc. How to use https://rectlabel.com Privacy policy https://rectlabel.com/privacy Terms of Use https://rectlabel.com/terms The standard RectLabel offers subscription plans, $2,99/month and $9.99/year. RectLabel Pro offers a one-time payment plan, $19.99/one-time. Both apps can use all features.

Estimates

Monthly Downloads > 2.2k
Est. Revenue ~ $900

Availability

Devices

MacDesktop

Pricing by country

Country Price
Canada 24.99 CAD
China 148 CNY
France 22.99 EUR
Germany 22.99 EUR
Italy 22.99 EUR
Netherlands 22.99 EUR
Portugal 22.99 EUR
Spain 22.99 EUR
UK 19.99 GBP
India 1999 INR
Japan 3000 JPY
Korea, Republic Of 33000 KRW
Poland 99.99 PLN
Russia 1790 RUB
Turkey 999.99 TRY
USA 19.99 USD
Ukraine 22.99 USD

Version History

Latest: 2026.04.02

- Corresponded to RF-DETR Core ML models. How to Train a RF-DETR Object Detection Model with Custom Data https://rectlabel.com/rfdetr_detection How to Train a RF-DETR Instance Segmentation Model with Custom Data https://rectlabel.com/rfdetr_segmentation - Exported split folders became train/valid/test. - Exported COCO file name became _annotations.coco.json. - Added "Convert pixels mask to polygon" option when exporting a COCO file.
v2025.04.29 2 weeks ago