agricultural landscape
Mapping Farmed Landscapes from Remote Sensing
Conserva, Michelangelo, Wilson, Alex, Stanton, Charlotte, Batchu, Vishal, Gulshan, Varun
Effective management of agricultural landscapes is critical for meeting global biodiversity targets, but efforts are hampered by the absence of detailed, large-scale ecological maps. To address this, we introduce Farmscapes, the first large-scale (covering most of England), high-resolution (25cm) map of rural landscape features, including ecologically vital elements like hedgerows, woodlands, and stone walls. This map was generated using a deep learning segmentation model trained on a novel, dataset of 942 manually annotated tiles derived from aerial imagery. Our model accurately identifies key habitats, achieving high f1-scores for woodland (96\%) and farmed land (95\%), and demonstrates strong capability in segmenting linear features, with an F1-score of 72\% for hedgerows. By releasing the England-wide map on Google Earth Engine, we provide a powerful, open-access tool for ecologists and policymakers. This work enables data-driven planning for habitat restoration, supports the monitoring of initiatives like the EU Biodiversity Strategy, and lays the foundation for advanced analysis of landscape connectivity.
- Europe > United Kingdom > England (0.46)
- North America > Canada > Quebec > Montreal (0.04)
- Asia > China > Yunnan Province > Kunming (0.04)
- (8 more...)
Time2Agri: Temporal Pretext Tasks for Agricultural Monitoring
Gupta, Moti Rattan, Sobti, Anupam
Self Supervised Learning(SSL) has emerged as a prominent paradigm for label-efficient learning, and has been widely utilized by remote sensing foundation models(RSFMs). Recent RSFMs including SatMAE, DoFA, primarily rely on masked autoencoding(MAE), contrastive learning or some combination of them. However, these pretext tasks often overlook the unique temporal characteristics of agricultural landscape, namely nature's cycle. Motivated by this gap, we propose three novel agriculture-specific pretext tasks, namely Time-Difference Prediction(TD), Temporal Frequency Prediction(FP), and Future-Frame Prediction(FF). Comprehensive evaluation on SICKLE dataset shows FF achieves 69.6% IoU on crop mapping and FP reduces yield prediction error to 30.7% MAPE, outperforming all baselines, and TD remains competitive on most tasks.
Agricultural Landscape Understanding At Country-Scale
Dua, Radhika, Saxena, Nikita, Agarwal, Aditi, Wilson, Alex, Singh, Gaurav, Tran, Hoang, Deshpande, Ishan, Kaur, Amandeep, Aggarwal, Gaurav, Nath, Chandan, Basu, Arnab, Batchu, Vishal, Holla, Sharath, Kurle, Bindiya, Missura, Olana, Aggarwal, Rahul, Garg, Shubhika, Shah, Nishi, Singh, Avneet, Tewari, Dinesh, Dondzik, Agata, Adsul, Bharat, Sohoni, Milind, Praveen, Asim Rama, Dangi, Aaryan, Kadivar, Lisan, Abhishek, E, Sudhansu, Niranjan, Hattekar, Kamlakar, Datar, Sameer, Chaithanya, Musty Krishna, Reddy, Anumas Ranjith, Kumar, Aashish, Tirumala, Betala Laxmi, Talekar, Alok
The global food system is facing unprecedented challenges. In 2023, 2.4 billion people experienced moderate to severe food insecurity [1], a crisis precipitated by anthropogenic climate change and evolving dietary preferences. Furthermore, the food system itself significantly contributes to the climate crisis, with food loss and waste accounting for 2.4 gigatonnes of carbon dioxide equivalent emissions per year (GT CO2e/yr) [2], and the production, mismanagement, and misapplication of agricultural inputs such as fertilizers and manure generating an additional 2.5 GT CO2e/yr [3]. To sustain a projected global population of 9.6 billion by 2050, the Food and Agriculture Organization (FAO) estimates that food production must increase by at least 60% [1]. However, this also presents an opportunity: transitioning to sustainable agricultural practices can transform the sector from a net source of greenhouse gas emissions to a vital carbon sink.
- Asia > India > Andaman and Nicobar Islands (0.14)
- Asia > India > Telangana (0.05)
- Asia > India > Maharashtra (0.05)
- (25 more...)
- Food & Agriculture > Agriculture (1.00)
- Materials > Chemicals > Agricultural Chemicals (0.34)
How AI is Reshaping the Agricultural Landscape
Utilizing technology is not a new practice in the agriculture and food and beverage sectors. We've already seen intelligent robots that can weed and pick apples, biometrics that can offer real-time animal information, and sophisticated equipment that can pump milk from cows with minimal human intervention. However, as technology improves, more clever technologies have appeared to help farmers increase their yield and speed up crop production. AI in the farming industry encourages farmers to increase their output while minimizing negative environmental consequences. The agriculture industry completely and publicly incorporated AI in its operations to change the overall result. Technology is transforming the way we grow our food, resulting in a 20% reduction in agricultural field emissions.
Can cobots transform the agriculture industry? - Tech Wire Asia
Robots in agriculture are becoming increasingly used by the industry today. An example would be the multiple analytics and machine learning tools used in smart farming to help with predicting harvests. One of these tools, agriculture robots, are normally used collaboratively (known as cobots). These robots possess mechanical arms and make harvesting much easier for farmers. Compared to traditional industrial robots and machinery, cobots are designed to work alongside human employees, giving manufacturers the benefits of both robots and humans combined.