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2025-03-25 00:00:00
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2.64k
train_paddy_HARYANA_JIND_2025-10-01
train
paddy
2025-10-01
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-10-10
train
paddy
2025-10-10
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-10-15
train
paddy
2025-10-15
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-10-20
train
paddy
2025-10-20
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-10-25
train
paddy
2025-10-25
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-10-30
train
paddy
2025-10-30
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-11-04
train
paddy
2025-11-04
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-11-09
train
paddy
2025-11-09
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-11-14
train
paddy
2025-11-14
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-11-19
train
paddy
2025-11-19
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-11-24
train
paddy
2025-11-24
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_HARYANA_JIND_2025-11-29
train
paddy
2025-11-29
JIND
HARYANA
India
29.4509
76.2571
5
180
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-10-01
train
paddy
2025-10-01
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-10-10
train
paddy
2025-10-10
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-10-15
train
paddy
2025-10-15
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-10-20
train
paddy
2025-10-20
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-10-25
train
paddy
2025-10-25
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-10-30
train
paddy
2025-10-30
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-11-04
train
paddy
2025-11-04
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-11-09
train
paddy
2025-11-09
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-11-14
train
paddy
2025-11-14
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-11-19
train
paddy
2025-11-19
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-11-24
train
paddy
2025-11-24
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_ASHOKNAGAR_2025-11-29
train
paddy
2025-11-29
ASHOKNAGAR
MADHYA_PRADESH
India
24.4929
77.9061
5
506
train_paddy_MADHYA_PRADESH_BHIND_2025-10-01
train
paddy
2025-10-01
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-10-10
train
paddy
2025-10-10
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-10-15
train
paddy
2025-10-15
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-10-20
train
paddy
2025-10-20
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-10-25
train
paddy
2025-10-25
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-10-30
train
paddy
2025-10-30
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-11-04
train
paddy
2025-11-04
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-11-09
train
paddy
2025-11-09
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-11-14
train
paddy
2025-11-14
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-11-19
train
paddy
2025-11-19
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-11-24
train
paddy
2025-11-24
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_BHIND_2025-11-29
train
paddy
2025-11-29
BHIND
MADHYA_PRADESH
India
26.1988
78.7243
5
455
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-10-01
train
paddy
2025-10-01
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-10-10
train
paddy
2025-10-10
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-10-15
train
paddy
2025-10-15
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-10-20
train
paddy
2025-10-20
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-10-25
train
paddy
2025-10-25
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-10-30
train
paddy
2025-10-30
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-11-04
train
paddy
2025-11-04
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-11-09
train
paddy
2025-11-09
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-11-14
train
paddy
2025-11-14
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-11-19
train
paddy
2025-11-19
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-11-24
train
paddy
2025-11-24
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_CHHINDWARA_2025-11-29
train
paddy
2025-11-29
CHHINDWARA
MADHYA_PRADESH
India
22.028
79.1364
5
100
train_paddy_MADHYA_PRADESH_DAMOH_2025-10-01
train
paddy
2025-10-01
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-10-10
train
paddy
2025-10-10
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-10-15
train
paddy
2025-10-15
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-10-20
train
paddy
2025-10-20
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-10-25
train
paddy
2025-10-25
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-10-30
train
paddy
2025-10-30
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-11-04
train
paddy
2025-11-04
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-11-09
train
paddy
2025-11-09
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-11-14
train
paddy
2025-11-14
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-11-19
train
paddy
2025-11-19
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-11-24
train
paddy
2025-11-24
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DAMOH_2025-11-29
train
paddy
2025-11-29
DAMOH
MADHYA_PRADESH
India
23.6474
79.6421
5
122
train_paddy_MADHYA_PRADESH_DATIA_2025-10-01
train
paddy
2025-10-01
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-10-10
train
paddy
2025-10-10
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-10-15
train
paddy
2025-10-15
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-10-20
train
paddy
2025-10-20
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-10-25
train
paddy
2025-10-25
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-10-30
train
paddy
2025-10-30
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-11-04
train
paddy
2025-11-04
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-11-09
train
paddy
2025-11-09
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-11-14
train
paddy
2025-11-14
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-11-19
train
paddy
2025-11-19
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-11-24
train
paddy
2025-11-24
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_DATIA_2025-11-29
train
paddy
2025-11-29
DATIA
MADHYA_PRADESH
India
25.8698
78.6437
5
1,797
train_paddy_MADHYA_PRADESH_GUNA_2025-10-01
train
paddy
2025-10-01
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-10-10
train
paddy
2025-10-10
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-10-15
train
paddy
2025-10-15
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-10-20
train
paddy
2025-10-20
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-10-25
train
paddy
2025-10-25
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-10-30
train
paddy
2025-10-30
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-11-04
train
paddy
2025-11-04
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-11-09
train
paddy
2025-11-09
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-11-14
train
paddy
2025-11-14
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-11-19
train
paddy
2025-11-19
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-11-24
train
paddy
2025-11-24
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GUNA_2025-11-29
train
paddy
2025-11-29
GUNA
MADHYA_PRADESH
India
24.7257
77.2138
5
140
train_paddy_MADHYA_PRADESH_GWALIOR_2025-10-01
train
paddy
2025-10-01
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-10-10
train
paddy
2025-10-10
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-10-15
train
paddy
2025-10-15
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-10-20
train
paddy
2025-10-20
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-10-25
train
paddy
2025-10-25
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-10-30
train
paddy
2025-10-30
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-11-04
train
paddy
2025-11-04
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-11-09
train
paddy
2025-11-09
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-11-14
train
paddy
2025-11-14
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-11-19
train
paddy
2025-11-19
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-11-24
train
paddy
2025-11-24
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_GWALIOR_2025-11-29
train
paddy
2025-11-29
GWALIOR
MADHYA_PRADESH
India
25.894
78.1926
5
1,930
train_paddy_MADHYA_PRADESH_HOSHANGABAD_2025-10-01
train
paddy
2025-10-01
HOSHANGABAD
MADHYA_PRADESH
India
22.7049
77.9651
5
1,580
train_paddy_MADHYA_PRADESH_HOSHANGABAD_2025-10-10
train
paddy
2025-10-10
HOSHANGABAD
MADHYA_PRADESH
India
22.7049
77.9651
5
1,580
train_paddy_MADHYA_PRADESH_HOSHANGABAD_2025-10-15
train
paddy
2025-10-15
HOSHANGABAD
MADHYA_PRADESH
India
22.7049
77.9651
5
1,580
train_paddy_MADHYA_PRADESH_HOSHANGABAD_2025-10-20
train
paddy
2025-10-20
HOSHANGABAD
MADHYA_PRADESH
India
22.7049
77.9651
5
1,580
End of preview. Expand in Data Studio

Crop Burn Detection — Raw Sentinel-2 (India, 2025)

Paired RGB + SWIR Sentinel-2 satellite image tiles across agricultural districts of northern India, capturing the paddy (Oct–Nov 2025) and wheat (Mar–May 2025) burning seasons. Built to train and benchmark vision models for real-time crop residue burn detection — including models designed to run directly on satellites.


Why We Built This

Every October and November, farmers across Punjab, Haryana, Uttar Pradesh, Rajasthan, and Madhya Pradesh burn millions of tonnes of paddy stubble left after harvest. It is the fastest and cheapest way to clear fields before the next crop — but the smoke blankets northern India in a toxic haze that turns Delhi's AQI past 500, sends millions to hospitals, and contributes meaningfully to South Asia's greenhouse gas load.

The same cycle repeats in April–May for wheat.

Satellite imagery already captures this burning as it happens. What's missing is a model that can detect, quantify, and track burns at scale and in near real-time — one that is lightweight enough to run on-board next-generation Earth observation satellites, eliminating the download bottleneck entirely.

This dataset is the foundation for that model. We assembled 5 km × 5 km Sentinel-2 tiles centered on known agricultural fire hotspots across 68 districts, sampled every 5–10 days across both burning seasons. Every tile includes both a natural-color RGB composite and a SWIR false-color composite — the combination that remote sensing practitioners use to distinguish active burns and recent scars from ordinary harvested fields.


Dataset at a Glance

Train Test
Pairs 1,098 267
Districts 55 13
States Punjab, Haryana, UP, MP, Rajasthan Punjab, UP, MP, Rajasthan
Seasons Paddy 2025 + Wheat 2025 Paddy 2025 + Wheat 2025
  • Total image pairs: 1,365
  • Tile size: 5 km × 5 km
  • Spatial resolution: ~10 m/pixel (Sentinel-2)
  • Split strategy: District-level — no district appears in both train and test
  • Country: India

Composites Explained

Each date and location has two images:

rgb_image — Natural Color (B4-B3-B2)

Standard visible composite. Healthy crops appear green, harvested stubble appears tan/brown, burn scars appear dark gray to black, water appears dark blue.

swir_image — SWIR False Color (B12-B8-B4)

Shortwave infrared composite, the key band for burn detection.

What you see What it means
Bright green Healthy standing crop (high NIR)
Brownish / pinkish-brown Harvested stubble or bare soil
Dark brown / charcoal black Burn scars — the darker and sharper, the fresher
White / bright cyan Cloud cover
Solid black Water or missing data

Schema

{
  "image_id":            str,   # e.g. "train_paddy_PUNJAB_AMRITSAR_2025-10-01"
  "rgb_image":           Image, # PIL image, natural color (B4-B3-B2)
  "swir_image":          Image, # PIL image, SWIR false color (B12-B8-B4)
  "split":               str,   # "train" or "test"
  "season":              str,   # "paddy" or "wheat"
  "date":                str,   # "YYYY-MM-DD"
  "district":            str,   # e.g. "AMRITSAR"
  "state":               str,   # e.g. "PUNJAB"
  "country":             str,   # "India"
  "latitude":            float, # tile center latitude
  "longitude":           float, # tile center longitude
  "tile_size_km":        float, # always 5.0
  "fires_district_2025": int,   # CREAMS fire count for this district in 2025
}

Coverage

Paddy Season (October – November 2025)

12 observation dates per district: 2025-10-01, 2025-10-10, 2025-10-15, 2025-10-20, 2025-10-25, 2025-10-30, 2025-11-04, 2025-11-09, 2025-11-14, 2025-11-19, 2025-11-24, 2025-11-29

Wheat Season (March – May 2025)

14 observation dates per district: 2025-03-25, 2025-04-01, 2025-04-06, 2025-04-11, 2025-04-16, 2025-04-21, 2025-04-26, 2025-05-01, 2025-05-06, 2025-05-11, 2025-05-16, 2025-05-21, 2025-05-26, 2025-05-31

Districts by State

State Train districts Test districts
Punjab 11 3
Uttar Pradesh 18 7
Madhya Pradesh 20 2
Rajasthan 6 1
Haryana 1 0

Tile centers were chosen using fire centroids from the CREAMS (Crop Residue Burning Emission and Monitoring System) database, targeting areas with ≥ 100 reported fires in 2025. This ensures tiles are sampled from genuinely fire-active agricultural zones rather than arbitrary field locations.


How to Use

from datasets import load_dataset

ds = load_dataset("munish0838/crop-burn-detection-raw")

# Stream without downloading everything
ds = load_dataset("munish0838/crop-burn-detection-raw", streaming=True)

# Access a sample
sample = next(iter(ds["train"]))
sample["rgb_image"].show()   # PIL Image
sample["swir_image"].show()  # PIL Image
print(sample["date"], sample["district"], sample["state"])

# Filter to Punjab paddy season only
punjab_paddy = ds["train"].filter(
    lambda x: x["state"] == "PUNJAB" and x["season"] == "paddy"
)

# Filter to post-harvest November dates
november = ds["train"].filter(
    lambda x: x["date"].startswith("2025-11")
)

Labeled Version

A labeled version of this dataset — with per-tile burn annotations (burn_detected, burn_severity, burn_fraction_estimate, burn_freshness, active_smoke_visible, vegetation_phase) produced through visual inspection of each image pair — will be released as munish0838/crop-burn-detection-labeled.


Intended Uses

  • Burn detection / classification — binary or multi-class burn presence
  • Burn severity estimation — fraction of cropland affected
  • Temporal change detection — tracking burn progression across dates
  • VLM fine-tuning — vision-language models for on-board satellite inference
  • Agricultural monitoring — harvest timing and crop phase detection
  • Air quality forecasting — burn activity as upstream input to pollution models

Limitations

  • Tiles with heavy cloud cover (>30%) are included but flagged via image_quality_limited in the labeled version
  • Some tiles have partial no-data regions (edge of satellite swath)
  • Coverage is limited to districts with historically high fire activity — low-fire regions are underrepresented
  • All tiles are from 2025; year-to-year variability is not captured in this release

Data Source

Imagery sourced from Sentinel-2 (ESA Copernicus programme), 5-day composites. Fire reference data from CREAMS (Crop Residue Burning Emission and Monitoring System). Tile selection methodology uses fire-centroid sampling to center tiles on historically active burn areas.


License

Creative Commons Attribution 4.0 (CC BY 4.0) — free to use for research and commercial purposes with attribution.

Sentinel-2 imagery is provided under the Copernicus Data Policy.

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