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Cropland: Refugee LCLUC North Uganda 2022 #337

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7 of 8 tasks
cnakalembe opened this issue Jul 10, 2023 · 14 comments
Open
7 of 8 tasks

Cropland: Refugee LCLUC North Uganda 2022 #337

cnakalembe opened this issue Jul 10, 2023 · 14 comments
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crop map Generate new crop map

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@cnakalembe
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cnakalembe commented Jul 10, 2023

  • Labeling projects created and links added below
  • Set 1 Labeling: Gedeon, Manthan, Bhanu, Taryn, Isha, Ivan, Abena, Adebowale
  • Set 2 Labeling: Sheila, Snehal, Aninda, Diana, Aditya, Mirali, Alana
  • Data added to repository
  • Intercomparison analysis
  • Model trained
  • Map made
  • Expert check
@cnakalembe cnakalembe added the crop map Generate new crop map label Jul 10, 2023
@MsPixels MsPixels self-assigned this Jul 31, 2023
@hannah-rae
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@MsPixels will confirm details with @cnakalembe and break out into individual issues

@cnakalembe
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We have to do annual-- something worth exploring later which is outside the current scope is looking at rapid changes (month to month) when new settlements are established

@MsPixels MsPixels changed the title Cropland: Refugee LCLUC AOIs February (2015-2024)-(Annual or quinquennial) Cropland: Refugee LCLUC North Uganda 2022 Sep 5, 2023
@MsPixels
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MsPixels commented Sep 5, 2023

New CEO Institution created for this project @cnakalembe

@MsPixels
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CEO Labeling update: 53.6% analyzed for Set 1 and 50.70% completed for Set 2

@MsPixels
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MsPixels commented Oct 2, 2023

@hannah-rae, CEO Labeling Update: 61.10% for Set A and 51.70% for Set B

@MsPixels
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@hannah-rae, CEO Labeling Update: 902 (90.20%) for Set A and 673 (67.30%) for Set B

@MsPixels
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Intercomparison analysis for Uganda North @cnakalembe

Image

@MsPixels
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MsPixels commented Dec 6, 2023

Uganda North Trained model @cnakalembe :

"Uganda_North_2022_V1": {
"params": "https://wandb.ai/nasa-harvest/crop-mask/runs/v5f8m489",
"test_metrics": {
"accuracy": 0.8018,
"f1_score": 0.6457,
"precision_score": 0.5775,
"recall_score": 0.7321,
"roc_auc_score": 0.8606
},
"val_metrics": {
"accuracy": 0.7982,
"f1_score": 0.6667,
"precision_score": 0.6571,
"recall_score": 0.6765,
"roc_auc_score": 0.8647
}

Random forest cropland Map V1

@MsPixels
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MsPixels commented Jan 9, 2024

After adding corrective labels, here is the metrics @cnakalembe:

"Uganda_North_2022_V2": {
"params": "https://wandb.ai/nasa-harvest/crop-mask/runs/0ngyleht",
"test_metrics": {
"accuracy": 0.6388,
"f1_score": 0.5341,
"precision_score": 0.3917,
"recall_score": 0.8393,
"roc_auc_score": 0.8004
},
"val_metrics": {
"accuracy": 0.6886,
"f1_score": 0.6321,
"precision_score": 0.488,
"recall_score": 0.8971,
"roc_auc_score": 0.8259
}
},

@MsPixels
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MsPixels commented Jan 9, 2024

Corrective Labeling App

@MsPixels
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MsPixels commented Jun 11, 2024

Generated a Random Forest approach in GEE to train the machine learning model and compare the results with the LSTM approach. 2975 crop and non crop labels were collected as training data and the CEO labeled dataset was used as the validation set. Code. The F1-score is 0.719

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MsPixels commented Jun 11, 2024

The 2975 labels were imported into the LSTM data pipeline as training data and used to retrain the model. The metrics of the model is stated below:

Uganda_North_2022_V3": {
"params": "https://wandb.ai/nasa-harvest/crop-mask/runs/9plwjt8m",
"test_metrics": {
"accuracy": 0.8106,
"f1_score": 0.6446,
"precision_score": 0.6,
"recall_score": 0.6964,
"roc_auc_score": 0.8742
},
"val_metrics": {
"accuracy": 0.8465,
"f1_score": 0.7445,
"precision_score": 0.7391,
"recall_score": 0.75,
"roc_auc_score": 0.9045
}

@MsPixels
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MsPixels commented Jun 13, 2024

Screenshot 2024-06-13 at 2 18 50 PM

Link @cnakalembe

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MsPixels commented Jun 14, 2024

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