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VCI Estimation Using Multispectral Imagery Sample Notebook #1724
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Check out this pull request on See visual diffs & provide feedback on Jupyter Notebooks. Powered by ReviewNB |
View / edit / reply to this conversation on ReviewNB priyankatuteja commented on 2024-09-10T07:09:34Z data path is directing to a deldevs org |
View / edit / reply to this conversation on ReviewNB priyankatuteja commented on 2024-09-10T07:09:35Z item on deldevs org |
View / edit / reply to this conversation on ReviewNB priyankatuteja commented on 2024-09-10T07:09:36Z item on private org |
View / edit / reply to this conversation on ReviewNB priyankatuteja commented on 2024-09-10T07:09:37Z item on private org |
View / edit / reply to this conversation on ReviewNB priyankatuteja commented on 2024-09-10T07:09:37Z item on private org |
View / edit / reply to this conversation on ReviewNB BP-Ent commented on 2024-09-30T20:48:49Z Traditionally, VCI from Landsat is calculated using a chain of formulas that are complex and demanding of resources. Fortunately, deep learning models provide an efficient way to compute and predict VCI. In this study, we propose an approach to predicting VCI from Landsat 5 & 8 imagery using the Pix2PixHD deep learning model. The VCI will be computed for both Landsat 5 & Landsat 8 using the Normalized Difference Vegetation Index (NDVI). The calculated VCI will then be used to train an image translation Pix2Pix model. The model will then be capable of translating Landsat-5 & Landsat-8 multispectral imagery to VCI, allowing the predictions to be used for multitemporal monitoring of VCI. |
View / edit / reply to this conversation on ReviewNB BP-Ent commented on 2024-09-30T20:48:50Z The Vegetation Condition Index (VCI) compares the current NDVI to a range of values observed in the same period in previous years.
The Normalized Difference Vegetation Index (NDVI) was calculated using the formula for all the images of Landsat 5 & Landsat 8. Using the time series NDVI rasters, NDVI Minimum and NDVI Maximum rasters were created that represent the minimum & maximum values of the NDVI for each pixel. Using these rasters, VCI rasters were created that we will use to train an image translation Pix2Pix model. |
View / edit / reply to this conversation on ReviewNB BP-Ent commented on 2024-09-30T20:48:51Z Common bands of Landsat 5 and Landsat 8 were extracted and used to create training data. The common bands are shown in the table below:
The common bands of Landsat, NDVI min, and NDVI max were stacked together to create an 8 band composite raster for all four years. The composite raster and VCI raster were used to export the training data in Export Tiles format. |
View / edit / reply to this conversation on ReviewNB BP-Ent commented on 2024-09-30T20:48:51Z In the maps above, the Vegetation Condition Index increases from dark green to red. 1996 was a year with normal rainfall, which means the vegetation had enough water to sustain it. As such, in the map it can be seen that most of the pixels are green, indicating good vegetation conditions. Conversely, 2022 was a year with a rain deficit, meaning stressful conditions for vegetation. The map displays corresponding red pixels, indicating extremely unfavorable conditions for vegetation growth. |
View / edit / reply to this conversation on ReviewNB BP-Ent commented on 2024-09-30T20:48:52Z In this notebook, we have demonstrated how to use a |
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VCI Estimation Using Multispectral Imagery Sample Notebook
Checklist
Please go through each entry in the below checklist and mark an 'X' if that condition has been met. Every entry should be marked with an 'X' to be get the Pull Request approved.
import
s are in the first cell?arcgis
imports? Note that in some cases, for samples, it is a good idea to keep the imports next to where they are used, particularly for uncommonly used features that we want to highlight.GIS
object instantiations are one of the following?gis = GIS()
gis = GIS('home')
orgis = GIS('pro')
gis = GIS(profile="your_online_portal")
gis = GIS(profile="your_enterprise_portal")
./misc/setup.py
and/or./misc/teardown.py
?api_data_owner
user?api_data_owner
account and change the notebook to first download and unpack the files.<img src="base64str_here">
instead of<img src="https://some.url">
? All map widgets contain a static image preview? (Callmapview_inst.take_screenshot()
to do so)os.path.join()
? (Instead ofr"\foo\bar"
,os.path.join(os.path.sep, "foo", "bar")
, etc.)Export Training Data Using Deep Learning
tool published on geosaurus org (api data owner account) and added in the notebook usinggis.content.get
function?gis.content.get
function? Note: This includes providing test raster and trained model.