Plastic Index for water applications

Used in water detection.

When to use

  • Permanent and seasonal water body delineation
  • Flood mapping and emergency response
  • Wetland inventory and change detection
  • Reservoir and lake water level monitoring
  • Coastal shoreline change analysis

Limitations

  • Dark surfaces (shadows, asphalt, dark soils) can produce false positives
  • Suspended sediments and algae alter spectral response in shallow water
  • Mixed pixels at water boundaries reduce edge accuracy
  • Atmospheric correction quality directly impacts threshold selection
  • Sun glint over open water can saturate sensors and bias values

What the values mean

-1 Definitely not water
-0.3 Dry / built-up surface
0 Possible moisture / wet soil
0.3 Open water
0.6 Deep / clear water
Surface typeTypical PI
Built-up, asphalt-0.5 to -0.2
Bare soil, vegetation-0.2 to 0
Wet soil, flooded fields0 to 0.3
Open water, lakes0.3 to 0.7

General Formula

N 770-900 nm
R 630-690 nm

Sensor-Specific Formulas

Most-used sensors — click to show code below

SensorProviderFormulaBand Mapping
21ATNIR/(NIR + Red)N→NIR, R→Red
CG SatelliteNIR/(NIR + Red)N→NIR, R→Red
USGS/NASAB5/(B5 + B4)N→B5, R→B4
USDANIR/(NIR + Red)N→NIR, R→Red
ESAB8/(B8 + B4)N→B8, R→B4
MAXARNIR1/(NIR1 + Red)N→NIR1, R→Red
MAXARNIR1/(NIR1 + Red)N→NIR1, R→Red

Spectral Band Visualization — BJ3A

Code Examples

Adapted for BJ3A bands —

pi_bj3a.py

Frequently Asked Questions

What is the PI (Plastic Index) and when should I use it?

Plastic Index for water applications Water indices exploit the strong absorption of shortwave infrared and near-infrared radiation by liquid water. They are critical for delineating water bodies, assessing moisture stress in vegetation, and monitoring hydrological changes over time. PI is particularly suited for water. The general formula is N/(N + R), which requires N and R spectral bands.

Which satellite sensors can I use to calculate PI?

PI is supported by 23 satellite sensors in our database, including BJ3A, BJ3N, Dragonette-1, Dragonette-2/3, Gaofen-1 and 18 more. Each sensor uses different band designations — for example, BJ3A uses the formula NIR/(NIR + Red), while BJ3N uses NIR/(NIR + Red). Select a sensor above to see its specific band mapping.

What spectral bands does PI require and why?

PI requires N (770-900 nm), R (630-690 nm). Water absorbs strongly in the near-infrared and shortwave infrared portions of the spectrum, creating a measurable contrast with shorter wavelengths that penetrate the water surface.

How do I calculate PI in Python or R?

Both Python and R code samples are provided above. In Python, use rasterio to load individual band GeoTIFF files and numpy for the arithmetic. In R, the terra package handles raster operations efficiently. The key is to load bands as floating-point arrays to avoid integer division, and to handle division-by-zero cases where the denominator equals zero. For production use, consider applying a valid data mask to exclude no-data pixels before calculation.

Can PI distinguish water from other dark surfaces?

PI is designed to enhance water features, but dark surfaces like shadows, asphalt, and dark soils can produce similar values. For reliable water mapping, consider combining PI with a threshold analysis and, where possible, a secondary index to reduce false positives. Time-series analysis can also help distinguish permanent water bodies from temporary dark surfaces.

PI vs other water indices

IndexNameHow it differs
LSWILand Surface Water IndexAlternative water index — different band combination
LWVI-1Leaf Water Vegetation Index 1Alternative water index — different band combination
LWVI-2Leaf Water Vegetation Index 2Alternative water index — different band combination
MNDWIModified Normalized Difference Water IndexRefined formulation for specific conditions

Related Water Indices

References

https://doi.org/10.3390/rs12162648

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