Bunch of different tools which helps visualizing and annotating images for semantic/instance segmentation tasks

Overview

Data Framework for Semantic/Instance Segmentation

Bunch of different tools which helps visualizing, transforming and annotating images for semantic/instance segmentation tasks. Check each folder to find these different tools.

Ground Truth Generation

Labeling tool that creates masks for your semantic segmentation problem. It uses watershed algorithm to boost annotation speed.

Ground Truth Generation with Object Detection

Labeling tool that leverages some Object Detection Model which already give the masks for your problem. Then you just need to assign the classes for each generated mask (check inside the folder for more details).

Ground Truth Analysis

Checks class histogram from a semantic segmentation dataset and verify images size distribution.

Data Inspection

Go through your whole dataset and choose which images are good or bad. This is a very important tool if you need clean data and wants to build a project with Data-Centric approach.

Dataset Stratification

Multi label dataset stratification can be really hard to execute. I propose a simple approach that keeps the class balance of your trainset and testset.

Class weights

If your dataset suffers from class imbalance, you need to calculate the weights if you want to apply them to your loss function or your Dataloader Sampler.

Any question you can get in contact

Linkedin: https://www.linkedin.com/in/brunofcarvalho1996/ Email: [email protected]

Owner
Bruno Fernandes Carvalho
Mechatronic Engineer specialized in Artificial Intelligence. Always searching for knowlegde and seeking to understand things from different areas of science.
Bruno Fernandes Carvalho
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