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| license: cc-by-nc-4.0 |
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| # Long-Range Wildfire & Smoke Detection Dataset |
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| ### Long-distance forest monitoring dataset featuring early smoke plumes and wildfire ignitions across global biomes. |
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| ## 🧐 Overview |
| **Long-Range Wildfire & Smoke** is a specialized open-source synthetic dataset for **Computer Vision (CV)** tasks focused on **Environmental Monitoring** and **Early Warning Systems**. |
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| Detecting a wildfire before it crowns is the most effective way to prevent ecological disaster. This dataset focuses on the **long-shot perspective**—replicating high-vantage surveillance cameras (tower-mounted or ridge-line cameras) that monitor vast forest expanses. By focusing heavily on smoke plumes (which are visible long before the fire itself), this dataset prepares models for real-world early detection where flames are often obscured by terrain or canopy. |
| Read more: [Simuletic Wildfire Dataset Information](https://simuletic.com/datasets/long-distance-wildfire-smoke-detection-dataset) |
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| ### 🚀 Need more data? |
| This 200+ image set is a sample from the **Simuletic Wildfire Series**. We provide hyper-realistic synthetic data to solve the challenge of detecting fires across diverse global landscapes. |
| * **Full Wildfire Dataset:** Extensive collections featuring 1500+ images. |
| * **Global Biomes:** Scenarios spanning Mediterranean scrub, Southern US pine forests, Asian tropical regions, and Greek highlands. |
| **Explore the full library at: [simuletic.com/datasets](https://simuletic.com/datasets)** |
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| ## ✨ Key Features |
| * **Long-Distance Perspective:** Specifically captured from simulated high-vantage points (fire towers, mountain peaks) to replicate long-range monitoring. |
| * **Realistic Class Distribution:** 90% of the dataset focuses on **Smoke**, reflecting the most common real-world detection scenario where the fire is not yet visible. |
| * **Global Diversity:** Varied terrain and vegetation types, including dry Mediterranean forests, lush Asian canopies, and North American woodlands. |
| * **Privacy-First & Ethical:** 100% synthetic. No real forests were burned, and no private property or PII is included, ensuring safe and compliant R&D. |
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| ## 📊 Dataset Structure |
| The dataset includes high-resolution synthetic images and a central `metadata.jsonl` file. |
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| ### Annotation Format (JSONL) |
| Annotations include a natural language description and categorical attributes for fire/smoke detection. |
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| ```json |
| { |
| "image": "wildfire_long_082.png", |
| "description": "A thick plume of grey smoke rising from a dense Mediterranean forest on a distant hillside, high-vantage surveillance view.", |
| "attributes": { |
| "class": "smoke", |
| "distance": "long_range", |
| "biome": "mediterranean", |
| "visibility": "partial_obscured" |
| } |
| } |
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| Class Map |
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| Smoke: Visible plumes, wisps, or thick columns rising above the canopy (90% of images). |
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| Wildfire: Active flames or crowning visible from the surveillance point (10% of images). |
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| 🛠 Use Cases |
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| Early Warning Systems: Automating 24/7 monitoring for forest fire towers and remote stations. |
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| Drone & Aerial AI: Training models for UAVs patrolling high-risk environmental zones. |
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| Environmental Protection: Enhancing response times for fire departments and forestry services through automated smoke detection. |
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| ⚖️ Ethics & License |
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| Synthetic Nature: This data is computer-generated by the Simuletic pipeline. It allows developers to train wildfire detection models without relying on scarce, low-quality, or ethically sensitive real-world fire footage. |
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| License: CC BY 4.0. You are free to use, share, and adapt this data, provided you give appropriate credit to Simuletic. |
| 📖 Citation |
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| If you use this dataset in your research or project, please cite: |
| Kodavsnitt |
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| @dataset{simuletic_wildfire_smoke_2026, |
| author = {Simuletic Team}, |
| title = {Long-Range Wildfire & Smoke Detection Dataset}, |
| year = {2026}, |
| publisher = {Kaggle}, |
| url = {[https://simuletic.com/datasets](https://simuletic.com/datasets)} |
| } |
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| Feedback? Reach out via simuletic.com or the "Issues" tab here on Kaggle. |