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Tomato Leaf Disease Detection - YOLOv8 Dataset
Annotated Tomato Leaf Disease Dataset for YOLOv8 Model Training & Detection
Annotated Tomato Leaf Disease Dataset for YOLOv8 Model Training & Detection
About Dataset
Overview
This dataset is designed for Tomato Leaf Disease Detection using YOLOv8. It contains 10,853 labeled images spanning 10 different classes of tomato leaf conditions, including viral, bacterial, and fungal infections, as well as healthy leaves.
Dataset Details
Total Images: 10,853
Train Set: 7,842 images (72%)
Validation Set: 1,960 images (18%)
Test Set: 1,051 images (10%)
Image Resolution: Resized to 640x640 (stretched)
Annotation Format: YOLOv8
Classes (10 Categories)
Tomato Bacterial Spot
Tomato Early Blight
Tomato Late Blight
Tomato Leaf Mold
Tomato Septoria Leaf Spot
Tomato Spider Mites (Two-Spotted Spider Mite)
Tomato Target Spot
Tomato Yellow Leaf Curl Virus
Tomato Healthy
Tomato Mosaic Virus
Preprocessing Applied
Auto-orientation of pixel data (EXIF metadata stripped)
Images resized to 640x640 (stretched)
No augmentation applied
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Gaza Before and After
Gaza Strip Satellite Imagery: Before & After The Conflict
Gaza Strip Satellite Imagery: Before & After The Conflict
About Dataset
This dataset is part of a project aimed at collecting high-resolution satellite imagery of the Gaza Strip before and after the recent conflict. The images were retrieved using Sentinel Hub API and Planet.com API, covering weekly snapshots from January 2023 to the present.
With over 3,500 images, each accompanied by a metadata JSON file, this dataset enables researchers, analysts, and humanitarian organizations to study urban damage assessment, environmental changes, and infrastructure impact.
Key Features:
Weekly satellite images from multiple sources (Sentinel-2, Landsat-8, PlanetScope)
Configurable grid-based coverage of the entire Gaza Strip
Each image includes metadata (timestamps, coordinates, satellite source, etc.)
Supports before & after visualizations for damage assessment
Open-source processing pipeline available on GitHub
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Person-Collecting-Waste COCO Dataset
COCO dataset of Person Collecting Garbage
COCO dataset of Person Collecting Garbage
The "Person-Collecting-Waste COCO Dataset," provided by the user ashu009 on Kaggle, is designed for object detection tasks and follows the COCO format. This dataset includes 300 images along with corresponding annotation files in JSON format. The primary goal of this dataset is to identify and detect individuals collecting waste, which can be useful for projects related to environmental protection and waste management.
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archive.zip
18.9 MB
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π Eye Disease Image Dataset
βA dataset of color fundus images of eye diseases
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βοΈ https://t.me/datasets1
βA dataset of color fundus images of eye diseases
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A total of 5335 images of healthy and affected eye images were collected from Anwara Hamida Eye Hospital in Faridpur and BNS Zahrul Haque Eye Hospital in Faridpur district with the help of the hospital authorities. Then from these original images, a total of 16242 augmented images are produced by using Rotation, Width shifting, Height shifting, Translation, Flipping, and Zooming techniques to increase the number of data.
Worldwide, eye ailments are recognized as significant contributors to nonfatal disabling conditions. In Bangladesh, 1.5% of adults suffer from blindness, while 21.6% experience low vision. Therefore, eye disease detection is crucial for preserving vision, preventing blindness, and maintaining overall health. Early detection allows for prompt intervention and treatment, preventing irreversible damage and preserving quality of life.
βοΈ https://t.me/datasets1
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You won't miss any cyber news with us.
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Kaggle Data Hub pinned Β«The latest and the most up-to-date cyber news will be presented on PPHM HACKER NEWS. PPHM subscribers are the first people that receive firsthand cybernews and Tech news. You won't miss any cyber news with us. https://t.me/pphm_HackerNewsΒ»
πBird vs Drone
βDistinguishing the Skies: A Dataset for Drone vs Bird Classification
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βοΈ https://t.me/datasets1
βDistinguishing the Skies: A Dataset for Drone vs Bird Classification
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YOLO-based Segmented Dataset for Drone vs. Bird Detection for Deep and Machine Learning Algorithms
Formatted in accordance with the YOLOv7 PyTorch specification, the dataset is organized into three folders: Test, Train, and Valid. Each folder contains two sub-foldersβImages and Labelsβwith the Labels folder including the associated metadata in plaintext format. This metadata provides valuable information about the detected objects within each image, allowing the model to accurately learn and detect drones and birds in varying circumstances. The dataset contains a total of 20,925 images, all with a resolution of 640 x 640 pixels in JPEG format, providing comprehensive training and validation opportunities for machine learning models.
βοΈ https://t.me/datasets1
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Bird vs Drone.zip
1.1 GB
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Kaggle Data Hub
Bird vs Drone.zip
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If you've worked on an interesting project with this dataset, weβd be happy to share your notebook or GitHub link with us. Weβd love to feature your project on the DataScienceN channel so others can benefit from it and give you stars or feedback. This is a great opportunity for your project to get more visibility and be useful to everyone!
If you've worked on an interesting project with this dataset, weβd be happy to share your notebook or GitHub link with us. Weβd love to feature your project on the DataScienceN channel so others can benefit from it and give you stars or feedback. This is a great opportunity for your project to get more visibility and be useful to everyone!
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Data Science Jupyter Notebooks
Explore the world of Data Science through Jupyter Notebooksβinsights, tutorials, and tools to boost your data journey. Code, analyze, and visualize smarter with every post.
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πEmotions dataset
βEmotions dataset for NLP classification tasks
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βοΈhttps://t.me/datasets1
βEmotions dataset for NLP classification tasks
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This dataset contains a collection of documents and their associated emotions, specifically designed for classification tasks in Natural Language Processing (NLP). The dataset includes a list of documents, each associated with a specific emotion label. It helps you develop machine learning models for identifying various emotions in text.
Dataset Contents:
A list of text documents with emotion labels
The dataset is split into three parts: training (Train), validation (Validation), and testing (Test) for building machine learning models.
βοΈhttps://t.me/datasets1
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Emotions.zip
721 KB
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πLabelled Faces in the Wild (LFW) Dataset
βOver 13,000 images of faces collected from the web
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βοΈhttps://t.me/datasets1
βOver 13,000 images of faces collected from the web
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The Labeled Faces in the Wild (LFW) dataset contains 13,233 images of faces from 5,749 different individuals, created for research in unconstrained face recognition. These images were gathered from the web and detected and centered using the Viola-Jones algorithm. The version used in this dataset is the deep-funneled version, in which the images are aligned in a specific way, and according to reports, it performs better in face verification algorithms. This dataset includes images and ten metadata files, which allow for training and testing models in two different modes (pairs of images or individual people). This collection was created by the University of Massachusetts, Amherst, and is considered one of the most widely used resources in the field of face recognition.
βοΈhttps://t.me/datasets1
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