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Deep learning-based retrieval of cyanobacteria pigment in inland water for in-situ and airborne hyperspectral data

机译:基于深度学习的内陆水中蓝细菌色素检索,用于原位和机载高光谱数据

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摘要

Worldwide proliferation of cyanobacteria blooms in inland waters not only affects the intended use of water but potentially threatens human and animal health. In this study, a stacked autoencoder-deep neural network (SAE-DNN) was developed to estimate phycocyanin (PC) concentration by using in situ reflectance spectra in productive inland water. The estimated PC using the SAE-DNN was in close agreement with the measured PC, with an R-2 of 0.87, root mean square error (RMSE) of 14.45 mu g/L, and relative RMSE of 86.42%. The performance of the SAE-DNN was superior to that of the DNN and band-ratio algorithms. An analysis on the deep spectral features extracted using the SAE yielded the most useful spectral bands, namely 538, 596, and 735 nm, for the retrieval of PC. The estimation accuracy of the SAE-DNNPeaks, using only the aforementioned spectral bands as input variables, was comparable to that of the SAE-DNN, demonstrating that the high-level of abstraction using the SAE facilitated the improvement in feature learning. The application of the SAE-DNNPeak to airborne hyperspectral image data resulted in an acceptable estimation accuracy, despite a bias toward underestimation, potentially arising from uncertainty associated with atmospheric correction, at high PC concentrations. Our results suggest that simple, empirical-based approaches, such as the SAE-DNNPeak have the potential to serve as a rapid assessment tool for the abundance and spatial distribution of cyanobacteria.
机译:蓝藻在世界范围内陆水域繁殖,不仅影响水的预期用途,而且还可能威胁人类和动物健康。在这项研究中,开发了一个堆叠式自动编码器-深层神经网络(SAE-DNN),以使用生产性内陆水中的原位反射光谱估算藻蓝蛋白(PC)的浓度。使用SAE-DNN估算的PC与测得的PC高度吻合,R-2为0.87,均方根误差(RMSE)为14.45μg / L,相对RMSE为86.42%。 SAE-DNN的性能优于DNN和带比算法。对使用SAE提取的深光谱特征进行的分析得出了最有用的光谱带,即538、596和735 nm,可用于PC的检索。仅使用上述光谱带作为输入变量,SAE-DNNPeaks的估计精度与SAE-DNN相当,这表明使用SAE进行高级抽象有助于改进特征学习。尽管存在偏低估计的偏见,但SAE-DNNPeak在机载高光谱图像数据上的应用仍导致可接受的估计精度,这可能是由于在高PC浓度下与大气校正相关的不确定性引起的。我们的结果表明,简单的,基于经验的方法(例如SAE-DNNPeak)有潜力作为蓝藻的丰度和空间分布的快速评估工具。

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