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Cross-regional oil palm tree counting and detection via a multi-level attention domain adaptation network

机译:通过多级关注域适配网络计数和检测跨区域油棕榈树

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摘要

Providing an accurate evaluation of palm tree plantation in a large region can bring meaningful impacts in both economic and ecological aspects. However, the enormous spatial scale and the variety of geological features across regions has made it a grand challenge with limited solutions based on manual human monitoring efforts. Although deep learning based algorithms have demonstrated potential in forming an automated approach in recent years, the labelling efforts needed for covering different features in different regions largely constrain its effectiveness in large-scale problems. In this paper, we propose a novel domain adaptive oil palm tree detection method, i.e., a Multi-level Attention Domain Adaptation Network (MADAN) to reap cross-regional oil palm tree counting and detection. MADAN consists of 4 procedures: First, we adopted a batch-instance normalization network (BIN) based feature extractor for improving the generalization ability of the model, integrating batch normalization and instance normalization. Second, we embedded a multi-level attention mechanism (MLA) into our architecture for enhancing the transferability, including a feature level attention and an entropy level attention. Then we designed a minimum entropy regularization (MER) to increase the confidence of the classifier predictions through assigning the entropy level attention value to the entropy penalty. Finally, we employed a sliding window-based prediction and an IOU based post-processing approach to attain the final detection results. We conducted comprehensive ablation experiments using three different satellite images of large-scale oil palm plantation area with six transfer tasks. MADAN improves the detection accuracy by 14.98% in terms of average Fl-score compared with the Baseline method (without DA), and performs 3.55-14.49% better than existing domain adaptation methods. Experimental results demonstrate the great potential of our MADAN for large-scale and cross-regional oil palm tree counting and detection, guaranteeing a high detection accuracy as well as saving the manual annotation efforts.
机译:在大地区的棕榈树种植园提供准确评估,可以对经济和生态方面带来有意义的影响。然而,跨越地区的巨大空间规模和各种地质特征使其成为基于手工人体监测努力的有限解决方案的大挑战。尽管近年来,基于深度学习的算法已经表现出在近年来形成自动化方法的潜力,但在不同地区覆盖不同特征所需的标签努力在很大程度上限制了其在大规模问题中的有效性。在本文中,我们提出了一种新颖的域自适应油棕榈树检测方法,即多级关注域适应网络(Madan),以获得跨区域油棕树计数和检测。 Madan由4个程序组成:首先,我们采用了一种基于批量归一化网络(BIN)的特征提取器,用于提高模型的泛化能力,集成批量归一化和实例归一化。其次,我们将多级注意机制(MLA)嵌入到我们的架构中,以提高可转移性,包括特征级别的关注和熵水平。然后,我们设计了一个最小的熵正则化(MER),以通过将熵级注意值分配给熵损失来增加分类器预测的置信度。最后,我们采用了一种基于滑窗的预测和基于IOO的后处理方法来获得最终的检测结果。我们使用具有六个转移任务的大型油棕榈种植区的三种不同卫星图像进行了全面的消融实验。与基线方法(没有DA)相比,Madan在平均飞行比较方面将检测精度提高14.98%,比现有域适应方法更好地执行3.55-14.49%。实验结果展示了我们对大型和跨区域油棕树计数和检测的巨大潜力,保证了高检测精度以及节省了手动注释工作。

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    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China|Chinese Univ Hong Kong CUHK SenseTime Joint Lab Hong Kong Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Minist Educ Key Lab Earth Syst Modeling Beijing 100084 Peoples R China|Joint Ctr Global Change Studies Beijing 100875 Peoples R China;

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  • 正文语种 eng
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  • 关键词

    Oil palm tree detection; Attention mechanism; Domain adaptation; Deep learning; Adversarial neural networks;

    机译:油棕榈树检测;注意机制;域适应;深入学习;对抗神经网络;

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