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Fully convolutional recurrent networks for multidate crop recognition from multitemporal image sequences

机译:多立体图像序列的多型作物识别的完全卷积复发网络

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Crop recognition in tropical regions is a challenging task because of the highly complex crop dynamics, with multiple crops per year. Nevertheless, most automatic methods proposed thus far are devoted to temperate areas where normally a single crop is cultivated along the crop year. This paper introduces convolutional recurrent networks for crop recognition in areas characterized by complex spatiotemporal dynamics typical of tropical agriculture, where a per date classification is required. The proposed networks consist of two sequential steps. First, a deep network simultaneously models spatial and temporal contexts. Second, a post-processing algorithm enforces prior knowledge about the crop dynamics in the target area based on the posterior probabilities computed in the first step. The paper proposes deep network architectures that join a fully convolutional network (FCN) for modeling spatial context at multiple levels and a bidirectional recurrent neural network to explore the temporal context. The recurrent network is configured as N-to-N, where N is the sequence length. This allows it to produce classification outcomes for the entire sequence of multi-temporal images using a single network. Different network designs are proposed based on three FCN architectures: U-Net, dense network, and Atrous Spatial Pyramid Pooling. A convolutional Long-Short-Term-Memory (ConvLSTM) accounts for sequence modeling, whereas the Most Likely Class Sequence (MLCS) algorithm is adopted for enforcing prior knowledge. The paper finally reports experiments conducted on Sentinel-1 data of two publicly available datasets from different tropical regions. The experimental results indicated that the proposed architectures outperformed state-of-the-art methods based on recurrent networks in terms of Overall Accuracy and per-class F1 score.
机译:由于高度复杂的作物动态,每年具有多种作物,热带地区的作物识别是一个具有挑战性的任务。然而,迄今为止提出的大多数自动方法都致力于温带通常沿着作物年培养的各种作物的区域。本文介绍了在典型的典型作物识别的卷积复发网络,其特征在于热带农业的复杂时空动态,需要每个日期分类。所提出的网络由两个连续步骤组成。首先,一个深网络同时模拟空间和时间上下文。其次,后处理算法基于在第一步中计算的后验概率强制了关于目标区域中的作物动态的先验知识。本文提出了深度网络架构,它加入一个完全卷积的网络(FCN),用于在多个级别和双向反复性神经网络处建模空间上下文,以探索时间上下文。复发网络被配置为n-to-n,其中n是序列长度。这允许其使用单个网络为整个多时间图像序列产生分类结果。基于三个FCN架构提出了不同的网络设计:U-Net,密集网络和不足的空间金字塔汇集。用于序列建模的卷积长短短期内存(Convlstm)帐户,而采用最可能的类序列(MLC)算法来执行先前知识。本文最后报告了从不同热带地区的两个公共数据集的Sentinel-1数据上进行的实验。实验结果表明,在整体准确性和每级F1分数方面,拟议的架构基于经常性网络表现优于最先进的方法。

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