9 ???? Object Detection Datasets
Last Updated on July 20, 2023 by Editorial Team
Author(s): Akula Hemanth Kumar
Originally published on Towards AI.
Starter code Available using Monk Libraries
In this article, I am going to share a few datasets for Object Detection. Starter code is provided in Github and you can directly run them in Colab.
P.S: Description of dataset is taken directly from the websites.
- Traffic Sign Recognition U+1F6A6U+1F6B3
The LISA Traffic Sign Dataset is a set of videos and annotated frames containing US traffic signs.
- Monk Starter code: Github
2. Exclusively-Dark-Image-Dataset U+1F9B8βU+2642οΈ
It is the largest collection of low-light images taken in very low-light environments to twilight (i.e 10 different conditions) to-date with image class and object-level annotations.
- Monk Starter code: Github
3.WGISD U+1F347
It provides images and annotations to study object detection and instance segmentation for image-based monitoring and field robotics in viticulture.
- Monk Starter code: Github
4.TACO U+1F37E
TACO is an open image dataset of waste in the wild. It contains photos of litter taken under diverse environments. Annotations are provided in the COCO format.
- Monk Starter code: Github
Open Image is a dataset of ~9M images annotated with image-level labels, object bounding boxes, object segmentation masks, visual relationships, and localized narratives. It contains a total of 16M bounding boxes for 600 object classes on 1.9M images, making it the largest existing dataset with object location annotations.
6.CAMEL Dataset U+1F42B
It provides visual-infrared object detection and tracking.
- Monk Starter code: Github
It provides playing cards object detection.
- Monk Starter code: Github
8.DeepFashion2 U+1F455
DeepFashion2 is a comprehensive fashion dataset. It contains 491K diverse images of 13 popular clothing categories from both commercial shopping stores and consumers.
- Monk Starter code: Github
The main goal of the WIDER Person Challenge is to address the problem of detecting pedestrians and cyclists in unconstrained environments.
- Monk Starter code: Github
I am extremely passionate about computer vision and deep learning. I am an open-source contributor to Monk Libraries.
Give us βοΈ on our GitHub repo if you like Monk Library.
Join thousands of data leaders on the AI newsletter. Join over 80,000 subscribers and keep up to date with the latest developments in AI. From research to projects and ideas. If you are building an AI startup, an AI-related product, or a service, we invite you to consider becoming aΒ sponsor.
Published via Towards AI