We all take pictures, don’t we? Similarly, satellite images are pictures of our planet taken by satellites from space. These images are incredibly useful for various purposes making it a very important tool to understand and manage our planet better. Using these images, we can identify different land cover and land types like water bodies, agricultural lands, forests, etc., on the earth's surface. We can detect land cover changes across time which can help in monitoring the environment. As we focus on mangrove carbon today, I’ll take you through a method of identifying mangroves using these satellite images. To identify mangroves, I used images from satellites Landsat 8 and Landsat 9 for 2018 and 2022 especially focusing on a small patch of mangrove in Merces, Goa. Satellite images are captured using sensors that detect various parts of the light spectrum i.e., various bands with various information. These bands are like different colors of the rainbow. When combined, bands like red, green, and blue give us regular color photos that we can see from our eyes. There are infrared bands that capture temperatures of the earth's surface, there are also near-infrared bands that can be used to understand the health of vegetation, and many other bands with specific purposes, and colors that are captured beyond what our eyes can see. For example, you can see, on the left layer panel in Step 1, there are several files loaded and each one has a number ‘B2, B3, B4...’ assigned at the end. These are satellite images with different bands that I downloaded for my area of interest i.e., Merces.
Step 1: Download and load the images Now to start the process of classifying different land cover types including mangroves, we install a plugin called Semi-Automatic Classification Plugin (SCP). This plugin helps us identify the different things in the images quickly on command. So firstly, we load the bands or images in the SCP for the plugin to detect the files for processing. The next thing the plugin does is create a combined image with all the bands together.