AMA-Net: Adaptive Masking Attention Network for Agricultural Crop Classification From UAV Images

Xu Wang;Deyi Wang;Zhaoshui He;Zhijie Lin;Shengli Xie
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Abstract

Agriculture crop classification is helpful for agricultural production. However, it is challenging to classify crops from the agriculture image suffering from these problems: 1) Crops are often masked in complex backgrounds; 2) There is high similarity between crop categories. To address these problems, an adaptive masking attention network (AMA-Net) is proposed for agriculture crop identification from natural images, where the adaptive masking (AM) module is developed to distinguish the crop from the complex background by selectively eliminating redundant information of feature maps, and the fair attention module is devised to identify similar crops between categories by modeling the fine-grained features. Experiments conducted on the benchmark show the effectiveness and superiority of the proposed AMA-Net, achieving the performance of 96.65%, 96.65%, 97.13%, and 96.72% on the accuracy, precision, recall, and F1-score, respectively, which is better than other state-of-the-art methods.
基于无人机图像的农作物分类自适应掩蔽关注网络
农作物分类有助于农业生产。然而,从农业图像中对作物进行分类存在以下问题:1)作物往往被复杂的背景掩盖;2)作物类别之间具有较高的相似性。针对这些问题,提出了一种用于自然图像农作物识别的自适应掩蔽关注网络(AMA-Net),其中自适应掩蔽(AM)模块通过选择性地消除特征图的冗余信息来区分复杂背景中的作物,公平关注模块通过对细粒度特征建模来识别类别之间的相似作物。在基准上进行的实验表明了本文提出的AMA-Net的有效性和优越性,准确率、精密度、召回率和f1分数分别达到96.65%、96.65%、97.13%和96.72%,优于其他先进方法。
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