Extraction of Pluvial Flood Relevant Volunteered Geographic Information (VGI) by Deep Learning from User Generated Texts and Photos
Abstract
:1. Introduction
2. Social Media Data Acquisition
3. Related Methods for Interpreting Flood Relevant Social Media Information
4. Interpretation of Social Media Texts
4.1. Pre-Processing and Training Preparation
4.2. Training of Text Classifiers
4.2.1. Classical NLP Methods
4.2.2. ConvNets for Sentence Classification
4.3. Results and Evaluation
5. Interpretation of Social Media Photos
5.1. Input Training Dataset
5.2. Training of Image Classifiers
5.3. Results and Evaluations
6. Detection of Heavy Rainfall and Flooding Events
6.1. Event Detection with Spatiotemporal Clustering
6.2. Polygon Based Hot Spot Detection with Getis-Ord Gi*
7. Visualization of the Pluvial Flood Relevant Information
8. Analyses and Comparison with External Data Source
9. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Abbreviations
AUC | Area Under the Curve |
ConvNets | Convolutional Neural Networks |
LDA | Latent Dirichlet allocation |
NLP | Natural Language Processing |
NLTK | Natural Language Toolkit |
RBF | Radial Basis Function |
ROC | Receiver Operating Characteristic |
SVM | Support Vector Machine |
tf-idf | Term Frequency - Inverse Document Frequency |
VGI | Volunteered Geographic Information |
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No. | Text |
---|---|
1 | Wind 13.4 mph NW. Barometer 1023.6 hPa, Rising slowly. Temperature 10.2 °C. |
Rain today 0.0 mm. Humidity 99% | |
2 | Wind 3 kts NW. Barometer 1025.5 hPa, Rising slowly. Temperature 8.8 °C. |
Rain today 0.0 mm. Humidity 81% | |
3 | Wind 14.4mph NW. Barometer 1034.1hPa, Rising slowly. Temperature 9.3 °C. |
Rain today 0.0mm. Forecast Settled fine | |
4 | Wind 2.2 mph NW. Barometer 1032.5 mb, Rising slowly. Temperature 10.9 °C. |
Rain today 7.2 mm. Humidity 99% |
Language | Keywords |
---|---|
English | flood, inundation, deluge, rain, storm |
French | inondation, inonder, crue, pluie, orage |
German | hochwasser, flut, überschwem, überflut, regen, starkregen, regnen, sturm, unwetter, gewitter |
Italian | inondazione, inondare, allagamento, pioggia, diluvio, borrasca, tempestad |
Spanish | inundar, inundación, diluvio, aguacero, lluvia, tormenta |
Portuguese | inundar, inundação, dilúvio, chuva, chover, tempestade |
Dutch | overstroming, zondvloed, stortvloed, regen, storm |
Method | Parameters |
---|---|
Random Forest | max_depth = 60, n_estimators = 300 |
Logistic Regression | C = 1.0, penalty = ‘l2’ |
SVM (Linear Kernel) | C = 1.0, gamma = ‘auto’ |
SVM (RBF Kernel) | C = 100.0, gamma = 0.01 |
ConvNets | learning_rate=0.001 |
Method | Accuracy | Precision | Recall | F1-Score | Runtime (s) |
---|---|---|---|---|---|
Naive Bayes | 0.7109 | 0.6929 | 0.7769 | 0.7325 | 0.02 |
Random Forest | 0.7582 | 0.7797 | 0.7324 | 0.7553 | 182.1 |
Logistic Regression | 0.7705 | 0.7793 | 0.7666 | 0.7729 | 0.53 |
SVM (RBF Kernel) | 0.7712 | 0.7687 | 0.7881 | 0.7783 | 286.0 |
SVM (Linear Kernel) | 0.7739 | 0.7732 | 0.7871 | 0.7801 | 207.2 |
ConvNets | 0.7868 | 0.7598 | 0.8503 | 0.8025 | 1124.8 |
Method | Subset 1 and Subset 2 | Subset 2 and Subset 3 |
---|---|---|
Logistic Regression | C = 1000.0 penalty = ‘l1’ | C = 10000.0 penalty = ‘l2’ |
Random Forest | max_depth = 60 n_estimators = 300 | max_depth = 30 n_estimators = 300 |
Multilayer Perceptron | num_hidden_units = 8 learning_rate = 0.005 | num_hidden_units = 8 learning_rate = 0.01 |
Gradient Boosted Trees | n_estimators = 300 learning_rate = 0.05 | n_estimators = 150 learning_rate = 0.1 |
xgboost | eta = 0.32, gamma = 0.01 max_depth = 15 | eta = 0.32, gamma = 0.05 max_depth = 15 |
Method | Accuracy | Precision | Recall | F1-score | Runtime (s) |
---|---|---|---|---|---|
Logistic Regression | 0.8886 | 0.9004 | 0.8752 | 0.8876 | 138.8 |
Multilayer Perceptron | 0.8907 | 0.9745 | 0.8036 | 0.8809 | 22.9 |
Random Forest | 0.9133 | 0.9497 | 0.8738 | 0.9102 | 117.9 |
Gradient Boosted Trees | 0.9252 | 0.9342 | 0.9158 | 0.9249 | 669.8 |
xgboost | 0.9295 | 0.9436 | 0.9144 | 0.9288 | 121.2 |
Method | Accuracy | Precision | Recall | F1-score | Runtime (s) |
---|---|---|---|---|---|
Logistic Regression | 0.8407 | 0.8453 | 0.8495 | 0.8474 | 221.3 |
Random Forest | 0.8555 | 0.8763 | 0.8411 | 0.8584 | 158.1 |
Multilayer Perceptron | 0.8625 | 0.8915 | 0.8378 | 0.8638 | 16.1 |
Gradient Boosted Trees | 0.8695 | 0.8836 | 0.8629 | 0.8731 | 425.3 |
xgboost | 0.8738 | 0.8872 | 0.8679 | 0.8774 | 134.2 |
Prediction | Correlation | p-Value |
---|---|---|
Prediction based on images | 0.0108 | 0.9439 |
Prediction based on texts | 0.4927 | 0.0006 |
Prediction based on both images and texts | 0.1063 | 0.4870 |
Prediction | Correlation | p-Value |
---|---|---|
Prediction based on images | 0.8360 | 0.0002 |
Prediction based on texts | 0.7685 | 0.0013 |
Prediction based on both images and texts | 0.7208 | 0.0036 |
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Share and Cite
Feng, Y.; Sester, M. Extraction of Pluvial Flood Relevant Volunteered Geographic Information (VGI) by Deep Learning from User Generated Texts and Photos. ISPRS Int. J. Geo-Inf. 2018, 7, 39. https://doi.org/10.3390/ijgi7020039
Feng Y, Sester M. Extraction of Pluvial Flood Relevant Volunteered Geographic Information (VGI) by Deep Learning from User Generated Texts and Photos. ISPRS International Journal of Geo-Information. 2018; 7(2):39. https://doi.org/10.3390/ijgi7020039
Chicago/Turabian StyleFeng, Yu, and Monika Sester. 2018. "Extraction of Pluvial Flood Relevant Volunteered Geographic Information (VGI) by Deep Learning from User Generated Texts and Photos" ISPRS International Journal of Geo-Information 7, no. 2: 39. https://doi.org/10.3390/ijgi7020039