研究目的
Investigating the possibility of using Convolutional Neural Networks (CNN) within the Positive and Unlabeled Learning (PUL) framework for estimating the urban tree canopy coverage from very high spatial resolution aerial imagery.
研究成果
The PUL framework with CNN provides competitive results for the extraction of tree canopy areas, requiring only labelled samples of the class of interest with unlabeled samples. This approach saves time and manpower, especially for large datasets. The results confirm the robustness of the PUL framework for one-class classification in remote sensing.
研究不足
The study focuses on the extraction of tree canopy areas from very high spatial resolution imagery, which may limit its applicability to other land-cover classes or lower resolution images. The performance of the PUL framework depends on the quality and quantity of the unlabeled samples.