Abstract
Recently, deep learning methods have achieved promising crop mapping results. Yet, their classification performance is constrained by the scarcity of labeled samples. Therefore, the development of methods capable of exploiting label-rich environments to classify crops in label-scarce environments using only a few labeled samples per class is required. Few-shot learning (FSL) methods have achieved this goal in computer vision for natural images, but they remain largely unexplored in crop mapping from time series data. In order to address this gap, we adapted eight FSL methods to map infrequent crops cultivated in the selected study areas from France and a large diversity of crops from a complex agricultural area situated in Ghana. The FSL methods are commonly evaluated using class-balanced unlabeled sets from the target domain data (query sets), leading to overestimated classification results. This is unrealistic since these sets can have an arbitrary number of samples per class. In our work, we used the Dirichlet distribution to model the class proportions in few-shot query sets as random variables. We demonstrated that transductive information maximization based on (Formula presented.) -divergence ((Formula presented.) -TIM) performs better than the competing methods, including dynamic time warping (DTW), which is commonly used to tackle the lack of labeled samples. (Formula presented.) -TIM achieved, for example, a macro F1-score of 59.6% in Ghana in a 24-way 20-shot setting (i.e., 20 labeled samples from each of the 24 crop types) and a macro F1-score of 75.9% in a seven-way 20-shot setting in France, outperforming the second best-performing methods by 2.7% and 5.7%, respectively. Moreover, (Formula presented.) -TIM outperformed a baseline deep learning model, highlighting the benefits of effectively integrating the query sets into the learning process.
Original language | English |
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Article number | 1026 |
Journal | Remote sensing |
Volume | 16 |
Issue number | 6 |
DOIs | |
Publication status | Published - Mar 2024 |
Keywords
- Crop mapping
- Deep Learning (DL)
- Few-shot learning
- Time series
- Transfer learning
- ITC-GOLD
- ITC-ISI-JOURNAL-ARTICLE