School of Urban and Environmental Engineering, Ulsan National Institute of Science and Technology, Ulsan 689-798, Republic of Korea.
Electronics and Telecommunication Research Institute, 218 Gajeong-ro, Yeseong-gu, Daejeon 305-700, Republic of Korea.
Sci Total Environ. 2021 Nov 10;794:148592. doi: 10.1016/j.scitotenv.2021.148592. Epub 2021 Jun 19.
Remote sensing techniques have been applied to monitor the spatiotemporal variation of harmful algal blooms (HABs) in many inland waters. However, these studies have been limited to monitor the vertical distribution of HABs due to the optical complexity of inland water. Therefore, this study applied a deep neural network model to monitor the vertical distribution of Chlorophyll-a (Chl-a), phycocyanin (PC), and turbidity (Turb) using drone-borne hyperspectral imagery, in-situ measurement, and meteoroidal data. The pigment concentrations were measured between depths of 0 m and 5.0 m with 0.05 m intervals. Here, four state-of-the-art data-driven model structures (ResNet-18, ResNet-101, GoogLeNet, and Inception v3) were adopted for estimating the vertical distributions of the harmful algal pigments. Among the four models, the ResNet-18 model showed the best performance, with an R value of 0.70. In addition, Gradient-weighted Class Activation Mapping (Grad-CAM) substantially provided informative reflectance band ranges near 490 nm and 620 nm in the hyperspectral image for the vertical estimation of pigments. Therefore, this study demonstrated that the explainable deep learning model with drone-borne hyperspectral images has the potential to estimate Chl-a, PC, and Turb vertical distributions and to show influential features that contribute to describing the vertical profile phenomena.
遥感技术已被应用于监测内陆水域有害藻华(HAB)的时空变化。然而,由于内陆水的光学复杂性,这些研究仅限于监测 HAB 的垂直分布。因此,本研究应用深度神经网络模型,利用无人机搭载高光谱图像、现场测量和气象数据监测叶绿素-a(Chl-a)、藻蓝蛋白(PC)和浊度(Turb)的垂直分布。色素浓度在 0m 至 5.0m 之间以 0.05m 的间隔进行测量。在此,采用了四种最先进的数据驱动模型结构(ResNet-18、ResNet-101、GoogLeNet 和 Inception v3)来估计有害藻色素的垂直分布。在这四个模型中,ResNet-18 模型表现出最好的性能,R 值为 0.70。此外,梯度加权类激活映射(Grad-CAM)在高光谱图像中为色素的垂直估算提供了有信息量的反射波段范围,接近 490nm 和 620nm。因此,本研究表明,具有无人机搭载高光谱图像的可解释深度学习模型具有估算 Chl-a、PC 和 Turb 垂直分布的潜力,并能显示有助于描述垂直剖面现象的有影响力的特征。