@inproceedings{895e878d5eae403cb7c647898aa04536,
title = "Crop classification using non-fixed length multi temporal images base on deep learning",
abstract = "Previous studies on crop classification methods based on deep learning for multi temporal images had already determined the number of inputs multi temporal images in the network structure design stage. However, in reality, due to satellite revisit cycles, weather, and other reasons, stable and clear remote sensing images (RSIs) cannot be continuously obtained. Once a period of image is missing from the multi temporal image sequence, the entire method cannot be used. Although methods such as interpolation and using other images instead can be used to address this issue, they greatly reduce the classification accuracy and stability of the methods, limiting their large-scale application. In response to the above issues, we first proposed a flexible multi temporal RSI dataset. For this dataset, an improved version UNet is constructed to train the model. Crop classification experiments shows that this model can be used without limiting the number of RSI periods and time inputs, and the classification accuracy gradually increases with the increase of image periods.",
keywords = "crop classification, deep learning, Multi temporal",
author = "Wei Leng and Wenqiang Li and Xiaolin Han and Huan Zhang and Weidong Sun",
note = "Publisher Copyright: {\textcopyright} 2025 SPIE.; 2024 International Conference on Remote Sensing and Digital Earth, RSDE 2024 ; Conference date: 08-11-2024 Through 10-11-2024",
year = "2025",
doi = "10.1117/12.3059111",
language = "English",
series = "Proceedings of SPIE - The International Society for Optical Engineering",
publisher = "SPIE",
editor = "Kegen Yu and Delavar, {Mahmoud Reza} and Jie Cheng",
booktitle = "International Conference on Remote Sensing and Digital Earth, RSDE 2024",
address = "United States",
}