jakarto3d/jakarnotator
The Jakarnotator is an annotation tool to create your own database for instance segmentation problem.
This tool helps you create custom datasets for training machine learning models to identify and outline specific objects in images, like urban furniture. You input your own collection of images, and by drawing outlines around objects in each image, you generate a structured dataset. This is ideal for researchers, data scientists, or GIS professionals building computer vision applications.
No commits in the last 6 months.
Use this if you need to build a specialized image dataset where individual objects (like trees, cars, or street signs) are precisely outlined for machine learning training.
Not ideal if you only need simple image classification or object detection (bounding boxes) rather than detailed per-pixel object outlines.
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Language
JavaScript
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Last pushed
Nov 20, 2018
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