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LSTM-based cotton yield prediction system using UAV imagery

机译:基于LSTM的棉花产量预测系统,使用UAV Imager

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Artificial intelligence technologies, including machine learning and deep learning, has shown the potential of transforming agriculture beyond our imaginations thanks to their abilities in extraction of hidden-layer information of big data. In recentyears, deep learning algorithms have been widely studied to process and analyze imagery data collected using UAV-based imaging systems in precision agriculture and plant high throughput phenotyping. Deep-learning based data analytic methods acquired higher accuracy in estimation of crop yield, plant height, disease infection and weed detection. The goal of this paper was to predict the. cotton yield using an improved Long short-term memory (LSTM) model, which is an artificial recurrent neural network (RNN) architecture used in the field of deep learning. LSTM model has feedback connections and combinations of different gates (such as input gate, forget gate and output gate) to control the information needed to be memory for the previous time stamp dataand to be updated from this time stamp inputs. In this study, a UAV imaging system consisting of a multispectral camera of five narrow spectral bands of blue (475±10 nm), green (560±10 nm), red (668±5 nm), red-edge (717±5 nm) and near-infrared (840±20 nm) was used to collect imagery data of cotton in three critical growth stages. Imagery data were pre-processed to remove background, calibrate reflectance and register to yield data based geo-referenced information. Multivariable factors of NDVI, GNDVI, canopy size and canopy temperature were extracted from UAV multispectral images and used as the input for the LSTM model. The parameters of the LSTM model with be optimized to improve the performance for accurate yield estimation.
机译:包括机器学习和深度学习,包括机器学习和深度学习的人工智能技术表明,由于他们在提取大数据的隐藏层信息中的能力,因此潜在地转变农业超越我们的想象力。在核心核心中,已经广泛研究了深度学习算法,以在精密农业和植物高吞吐量表型中使用基于UV基成像系统收集的图像和分析收集的图像数据。基于深度学习的数据分析方法在估计作物产量,植物高度,疾病感染和杂草检测时获得了更高的准确性。本文的目标是预测。使用改进的长短短期记忆(LSTM)模型的棉花产量,是在深度学习领域中使用的人工复发性神经网络(RNN)架构。 LSTM模型具有反馈连接和不同门(例如输入门,忘记门和输出门)的组合,以控制用于以前的时间戳DataAnd的存储器所需的信息,以便从该时间戳输入更新。在本研究中,由蓝色(475±10nm),绿色(560±10nm),红色(668±5 nm),红色边缘(717±5 NM)和近红外线(840±20nm)用于在三个关键的生长阶段收集棉花的图像数据。预处理图像以删除背景,校准反射率并注册以产生基于数据的地理参考信息。从UAV MultiSpectral图像中提取NDVI,GNDVI,冠层大小和冠层温度的多变量因子,用作LSTM模型的输入。 LSTM模型的参数优化以提高精确产量估计的性能。

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