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Deforestation detection

It is a machine learning–based monitoring tool that detects and quantifies historical forest loss using satellite imagery within a user-defined area, generating multi-year reports to support environmental monitoring and regulatory compliance.

It is a machine learning–based monitoring tool designed to accurately detect and quantify historical forest loss. By analyzing satellite imagery within a user-defined geofence, the system generates a detailed multi-year report assessing the likelihood of past deforestation events, enabling precise environmental monitoring and regulatory compliance verification.

Water production and storage, and water use efficiency

Main theme:

Asian

Region:

2000 - 2400

Precipitation (mm):

Low

Application difficulty:

1, 2, 8, 5, 10, 13, 15, 14, 12 and 17

SDGs impacted:

Electric

Energy used:

70 - 90

Efficiency (%):

Urban/Rural

Sector:

Validates sustainable practices: It allows farmers to generate official reports proving their land is deforestation-free, which is essential for participating in sustainable supply chains that protect forests.

Protects on-farm forests: Farmers can monitor their properties for illegal logging or encroachment, enabling them to act as the first line of defense in preserving native vegetation.

Supports targeted reforestation: It helps identify previously deforested or degraded areas on their land, facilitating the planning and implementation of effective tree-planting and ecosystem restoration projects.

Prevents unintentional expansion: By providing a clear historical record of farm boundaries, it helps farmers manage land responsibly and avoid encroaching on protected forests or neighboring reserves.

Expected environmental impact:

Free

Estimated value:

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