A densely attentive refinement network for change detection based on very-high-resolution bitemporal remote sensing images Z Li, C Yan, Y Sun, Q Xin IEEE Transactions on Geoscience and Remote Sensing 60, 1-18, 2022 | 79 | 2022 |
Evaluations and comparisons of rule-based and machine-learning-based methods to retrieve satellite-based vegetation phenology using MODIS and USA National Phenology Network data Q Xin, J Li, Z Li, Y Li, X Zhou International Journal of Applied Earth Observation and Geoinformation 93, 102189, 2020 | 55 | 2020 |
Counting trees in a subtropical mega city using the instance segmentation method Y Sun, Z Li, H He, L Guo, X Zhang, Q Xin International Journal of Applied Earth Observation and Geoinformation 106 …, 2022 | 38 | 2022 |
A deep learning-based framework for automated extraction of building footprint polygons from very high-resolution aerial imagery Z Li, Q Xin, Y Sun, M Cao Remote Sensing 13 (18), 3630, 2021 | 34 | 2021 |
Identifying leaf phenology of deciduous broadleaf forests from phenocam images using a convolutional neural network regression method M Cao, Y Sun, X Jiang, Z Li, Q Xin Remote Sensing 13 (12), 2331, 2021 | 18 | 2021 |
High-resolution mapping of paddy rice fields from unmanned airborne vehicle images using enhanced-TransUnet C Yan, Z Li, Z Zhang, Y Sun, Y Wang, Q Xin Computers and Electronics in Agriculture 210, 107867, 2023 | 9 | 2023 |
Deep learning for urban land use category classification: A review and experimental assessment Z Li, B Chen, S Wu, M Su, JM Chen, B Xu Remote Sensing of Environment 311, 114290, 2024 | 4 | 2024 |
Developing global annual land surface phenology datasets (1982–2018) from the AVHRR data using multiple phenology retrieval methods W Wu, Z Li, Z Zhang, C Yan, K Xiao, Y Wang, Q Xin Ecological Indicators 150, 110262, 2023 | 2 | 2023 |