Detecting various types of stresses (nutritional, water, nitrogen, etc.) in
agricultural fields is critical for farmers to ensure maximum productivity.
However, stresses show up in different shapes and sizes across different crop
types and varieties. Hence, this is posed as an anomaly detecti
以受限遮蔽图像模型为指导的自主学习在遥感中预训练视觉转换器方面引起了广泛关注。在本文中,我们探讨了光谱和空间遥感图像特征作为改进的自编码器重建目标。实验结果说明了 FG-MAE 在 SAR 图像方面的特殊增强效果,同时展示了 FG-MAE 的良好可扩展性,并发布了首批用于中分辨率 SAR 和多光谱图像的预训练视觉转换器。