LGCVMar 11, 2024

A Geospatial Approach to Predicting Desert Locust Breeding Grounds in Africa

arXiv:2403.06860v23 citationsh-index: 13
Originality Incremental advance
AI Analysis

This addresses food security threats by enhancing early warning systems for locust control, though it is incremental as it builds on existing geospatial models.

The study tackled predicting desert locust breeding grounds in Africa by developing a model that uses multi-spectral earth observation images, achieving high accuracy with scores like 83.03% and 87.69% ROC-AUC.

Desert locust swarms present a major threat to agriculture and food security. Addressing this challenge, our study develops an operationally-ready model for predicting locust breeding grounds, which has the potential to enhance early warning systems and targeted control measures. We curated a dataset from the United Nations Food and Agriculture Organization's (UN-FAO) locust observation records and analyzed it using two types of spatio-temporal input features: remotely-sensed environmental and climate data as well as multi-spectral earth observation images. Our approach employed custom deep learning models (three-dimensional and LSTM-based recurrent convolutional networks), along with the geospatial foundational model Prithvi recently released by Jakubik et al., 2023. These models notably outperformed existing baselines, with the Prithvi-based model, fine-tuned on multi-spectral images from NASA's Harmonized Landsat and Sentinel-2 (HLS) dataset, achieving the highest accuracy, F1 and ROC-AUC scores (83.03%, 81.53% and 87.69%, respectively). A significant finding from our research is that multi-spectral earth observation images alone are sufficient for effective locust breeding ground prediction without the need to explicitly incorporate climatic or environmental features.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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