Hyperspectral

高光谱
  • 文章类型: Journal Article
    农业遥感中有机质含量变化率的高光谱检测需要较高的信噪比(SNR)。然而,由于组件的数量和效率限制,很难提高信噪比。这项研究使用高效率的凸光栅,在360-850nm范围内衍射效率超过50%,具有95%峰值波长效率的背照式互补金属氧化物半导体(CMOS)检测器,和镀银的镜子,以开发用于检测土壤有机质(SOM)的成像光谱仪。设计的系统在360-850nm范围内满足10nm的光谱分辨率,并在648.2km的轨道高度处实现100km的条带和100m的空间分辨率。这项研究还使用了Offner的基本结构,在设计中使用了较少的组件,并将Offner结构的反射镜设置为具有相同的球体,从而可以实现协标准的快速调整。本研究对基于经典Rowland圆形结构开发的Offner成像光谱仪进行了理论分析,21.8mm狭缝长度;模拟其抑制+2级衍射杂散光的能力;并分析满足公差要求后的成像质量,这与高效光栅的表面形状特性相结合。在这个测试之后,光栅的衍射效率高于50%,镀银镜的反射值平均在95%以上。最后,实验室测试表明,该波段的信噪比超过300,在550nm处达到800,高于目前轨道上的一些土壤观测仪器。拟议的成像光谱仪具有10nm的光谱分辨率,在奈奎斯特频率下,其调制传递函数(MTF)大于0.23,适用于SOM变化率的遥感观测。这种高效宽带光栅的制造和所提出的具有高能量传输效率的仪器的开发可以为高信噪比的微弱目标观测提供可行的技术方案。
    Hyperspectral detection of the change rate of organic matter content in agricultural remote sensing requires a high signal-to-noise ratio (SNR). However, due to the large number and efficiency limitation of the components, it is difficult to improve the SNR. This study uses high-efficiency convex grating with a diffraction efficiency exceeding 50% across the 360-850 nm range, a back-illuminated Complementary Metal Oxide Semiconductor (CMOS) detector with a 95% efficiency in peak wavelength, and silver-coated mirrors to develop an imaging spectrometer for detecting soil organic matter (SOM). The designed system meets the spectral resolution of 10 nm in the 360-850 nm range and achieves a swath of 100 km and a spatial resolution of 100 m at an orbital height of 648.2 km. This study also uses the basic structure of Offner with fewer components in the design and sets the mirrors of the Offner structure to have the same sphere, which can achieve the rapid adjustment of the co-standard. This study performs a theoretical analysis of the developed Offner imaging spectrometer based on the classical Rowland circular structure, with a 21.8 mm slit length; simulates its capacity for suppressing the +2nd-order diffraction stray light with the filter; and analyzes the imaging quality after meeting the tolerance requirements, which is combined with the surface shape characteristics of the high-efficiency grating. After this test, the grating has a diffraction efficiency above 50%, and the silver-coated mirrors have a reflection value above 95% on average. Finally, the laboratory tests show that the SNR over the waveband exceeds 300 and reaches 800 at 550 nm, which is higher than some current instruments in orbit for soil observation. The proposed imaging spectrometer has a spectral resolution of 10 nm, and its modulation transfer function (MTF) is greater than 0.23 at the Nyquist frequency, making it suitable for remote sensing observation of SOM change rate. The manufacture of such a high-efficiency broadband grating and the development of the proposed instrument with high energy transmission efficiency can provide a feasible technical solution for observing faint targets with a high SNR.
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  • 文章类型: Journal Article
    视网膜高光谱成像(HSI)是一种非侵入性的体内方法,已在阿尔茨海默氏病中显示出希望。帕金森病是另一种神经退行性疾病,其中脑病理学如α-突触核蛋白和铁的过度积累与视网膜有关。然而,尚不清楚HSI在帕金森病的体内模型中是否发生改变,它是否不同于健康的衰老,以及推动这些变化的机制。为了解决这个问题,我们在两个不同年龄的帕金森病小鼠模型中进行了HSI;α-突触核蛋白过度积累模型(hA53T转基因株系M83,A53T)和铁沉积模型(Tau敲除,TauKO).与野生型同窝相比,A53T和TauKO小鼠在短波长〜450至600nm处的反射率均增加。相比之下,三个背景菌株的健康衰老表现出相反的效果,在短波长光谱中反射率降低。我们还证明了帕金森的高光谱特征与阿尔茨海默病模型相似,5xFAD小鼠。当相对于年龄作图时,HSI的多变量分析是有意义的。此外,当α-突触核蛋白,添加铁或视网膜神经纤维层厚度作为辅因子,这改善了某些组中相关性的R2值。这项研究证明了帕金森病的体内高光谱特征,这在两个小鼠模型中是一致的,并且与健康衰老不同。还有一个建议,包括α-突触核蛋白和铁的视网膜沉积在内的因素可能在晚期衰老中驱动帕金森氏病的高光谱轮廓和视网膜神经纤维层厚度中起作用。这些发现表明,HSI可能是帕金森病的一个有前途的翻译工具。
    Retinal hyperspectral imaging (HSI) is a non-invasive in vivo approach that has shown promise in Alzheimer\'s disease. Parkinson\'s disease is another neurodegenerative disease where brain pathobiology such as alpha-synuclein and iron overaccumulation have been implicated in the retina. However, it remains unknown whether HSI is altered in in vivo models of Parkinson\'s disease, whether it differs from healthy aging, and the mechanisms which drive these changes. To address this, we conducted HSI in two mouse models of Parkinson\'s disease across different ages; an alpha-synuclein overaccumulation model (hA53T transgenic line M83, A53T) and an iron deposition model (Tau knock out, TauKO). In comparison to wild-type littermates the A53T and TauKO mice both demonstrated increased reflectivity at short wavelengths ~ 450 to 600 nm. In contrast, healthy aging in three background strains exhibited the opposite effect, a decreased reflectance in the short wavelength spectrum. We also demonstrate that the Parkinson\'s hyperspectral signature is similar to that from an Alzheimer\'s disease model, 5xFAD mice. Multivariate analyses of HSI were significant when plotted against age. Moreover, when alpha-synuclein, iron or retinal nerve fibre layer thickness were added as a cofactor this improved the R2 values of the correlations in certain groups. This study demonstrates an in vivo hyperspectral signature in Parkinson\'s disease that is consistent in two mouse models and is distinct from healthy aging. There is also a suggestion that factors including retinal deposition of alpha-synuclein and iron may play a role in driving the Parkinson\'s disease hyperspectral profile and retinal nerve fibre layer thickness in advanced aging. These findings suggest that HSI may be a promising translation tool in Parkinson\'s disease.
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  • 文章类型: Journal Article
    联合国(UN)强调可持续农业在解决持续饥饿和通过全球发展到2030年实现零饥饿方面的关键作用。集约化的农业做法对土壤质量产生了不利影响,需要进行土壤养分分析以提高农场生产力和环境可持续性。研究人员越来越多地转向人工智能(AI)技术,以改善作物产量估算并优化土壤营养管理。这项研究回顾了2014年至2024年发表的155篇论文,评估了机器学习(ML)和深度学习(DL)在预测土壤养分中的应用。它突出了高光谱和多光谱传感器的潜力,通过多个波段的光谱分析实现精确的营养鉴定。该研究强调了特征选择技术的重要性,通过消除与目标营养素的弱相关性的冗余光谱波段来提高模型性能。此外,使用光谱指数,从基于吸收光谱的光谱带的数学比率得出,检查其在准确预测土壤养分水平方面的有效性。通过评估与土壤养分预测相关的各种绩效指标和数据集,本文对人工智能技术在优化土壤营养管理中的适用性提供了全面的见解。从这次审查中获得的见解可以为实现全球发展目标和促进环境可持续性的未来研究和政策决策提供信息。
    The United Nations (UN) emphasizes the pivotal role of sustainable agriculture in addressing persistent starvation and working towards zero hunger by 2030 through global development. Intensive agricultural practices have adversely impacted soil quality, necessitating soil nutrient analysis for enhancing farm productivity and environmental sustainability. Researchers increasingly turn to Artificial Intelligence (AI) techniques to improve crop yield estimation and optimize soil nutrition management. This study reviews 155 papers published from 2014 to 2024, assessing the use of machine learning (ML) and deep learning (DL) in predicting soil nutrients. It highlights the potential of hyperspectral and multispectral sensors, which enable precise nutrient identification through spectral analysis across multiple bands. The study underscores the importance of feature selection techniques to improve model performance by eliminating redundant spectral bands with weak correlations to targeted nutrients. Additionally, the use of spectral indices, derived from mathematical ratios of spectral bands based on absorption spectra, is examined for its effectiveness in accurately predicting soil nutrient levels. By evaluating various performance measures and datasets related to soil nutrient prediction, this paper offers comprehensive insights into the applicability of AI techniques in optimizing soil nutrition management. The insights gained from this review can inform future research and policy decisions to achieve global development goals and promote environmental sustainability.
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  • 文章类型: Journal Article
    电子背散射衍射和阴极发光是广泛用于半导体薄膜表征的互补扫描电子显微镜模式,分别揭示了晶体材料的应变状态以及该应变对样品发光的影响。碰撞梁,样品和检测器的几何形状意味着通常不可能在同一扫描期间一起采集两个信号。这里,我们提出了一种实现这种同时采集的方法,通过透明样品基板收集光发射。我们应用这种技术组合来研究深紫外微型LED中的应变场和由此产生的发射波长变化。对于此类兼容样品,这种方法具有避免图像对准问题和最小化光束损伤效应的优点。
    Electron backscatter diffraction and cathodoluminescence are complementary scanning electron microscopy modes widely used in the characterisation of semiconductor films, respectively revealing the strain state of a crystalline material and the effect of this strain on the light emission from the sample. Conflicting beam, sample and detector geometries have meant it is not generally possible to acquire the two signals together during the same scan. Here, we present a method of achieving this simultaneous acquisition, by collecting the light emission through a transparent sample substrate. We apply this combination of techniques to investigate the strain field and resultant emission wavelength variation in a deep-ultraviolet micro-LED. For such compatible samples, this approach has the benefits of avoiding image alignment issues and minimising beam damage effects.
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  • 文章类型: Journal Article
    这项研究描述了一种对胶质瘤病理切片进行分级的新方法。我们自己的集成高光谱成像系统用于表征来自神经胶质瘤微阵列载玻片的270条带癌组织样本。然后根据世界卫生组织制定的指南对这些样本进行分类,定义了弥漫性神经胶质瘤的亚型和等级。我们使用不同恶性等级的脑胶质瘤的显微高光谱图像探索了一种称为SMLMER-ResNet的高光谱特征提取模型。该模型结合通道注意机制和多尺度图像特征,自动学习胶质瘤的病理组织,获得分层特征表示,有效去除冗余信息的干扰。它还完成了多模态,多尺度空间谱特征提取提高胶质瘤亚型的自动分类。所提出的分类方法具有较高的平均分类精度(>97.3%)和Kappa系数(0.954),表明其在提高高光谱胶质瘤自动分类方面的有效性。该方法很容易适用于广泛的临床环境。为减轻临床病理学家的工作量提供宝贵的帮助。此外,这项研究有助于制定更个性化和更精细的治疗计划,以及随后的随访和治疗调整,通过为医生提供对神经胶质瘤潜在病理组织的见解。
    This study describes a novel method for grading pathological sections of gliomas. Our own integrated hyperspectral imaging system was employed to characterize 270 bands of cancerous tissue samples from microarray slides of gliomas. These samples were then classified according to the guidelines developed by the World Health Organization, which define the subtypes and grades of diffuse gliomas. We explored a hyperspectral feature extraction model called SMLMER-ResNet using microscopic hyperspectral images of brain gliomas of different malignancy grades. The model combines the channel attention mechanism and multi-scale image features to automatically learn the pathological organization of gliomas and obtain hierarchical feature representations, effectively removing the interference of redundant information. It also completes multi-modal, multi-scale spatial-spectral feature extraction to improve the automatic classification of glioma subtypes. The proposed classification method demonstrated high average classification accuracy (>97.3%) and a Kappa coefficient (0.954), indicating its effectiveness in improving the automatic classification of hyperspectral gliomas. The method is readily applicable in a wide range of clinical settings, offering valuable assistance in alleviating the workload of clinical pathologists. Furthermore, the study contributes to the development of more personalized and refined treatment plans, as well as subsequent follow-up and treatment adjustment, by providing physicians with insights into the underlying pathological organization of gliomas.
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  • 文章类型: Journal Article
    在稻田管理中使用化肥直接影响水稻产量。传统的水稻种植往往依靠农民的经验来制定施肥计划,不能根据水稻的肥料要求进行调整。目前,农用无人机被广泛用于水稻的早期监测,但是由于他们缺乏理性,它们不能直接指导受精。如何在分耕期准确施用氮肥以稳定水稻产量是当前水稻规模化生产过程中亟待解决的问题。
    WOFOST是一种高度机械的作物生长模型,可以有效地模拟施肥对水稻生长发育的影响。然而,由于其缺乏空间异质性,它在田间水平上模拟作物生长的能力较弱。本研究基于无人机遥感获取水稻冠层高光谱数据,利用WOFOST作物生长模型,研究水稻分耕期氮肥施用决策方法。利用连续投影算法提取水稻冠层高光谱特征,构建基于极限学习机的水稻生物量高光谱反演模型.通过使用两种数据同化方法,集成卡尔曼滤波与四维变分,对水稻生物量高光谱反演模型和局部WOFOST作物生长模型的反演生物量进行同化,并对WOFOST模型的仿真结果进行了修正。以平均产量为目标,利用WOFOST模型制定施肥决策,制作施肥处方图,实现水稻分耕阶段精准施肥。
    研究结果表明,水稻生物量高光谱反演模型的训练集R2和RMSE分别为0.953和0.076,而测试集R2和RMSE分别为0.914和0.110。当获得相同的产量时,基于ENKF同化方法的施肥策略,与标准施肥方案相比减少了5.9%。
    这项研究通过数据同化提高了无人机遥感机器的合理性,为水稻施肥决策提供了新的理论依据。
    UNASSIGNED: The use of chemical fertilizers in rice field management directly affects rice yield. Traditional rice cultivation often relies on the experience of farmers to develop fertilization plans, which cannot be adjusted according to the fertilizer requirements of rice. At present, agricultural drones are widely used for early monitoring of rice, but due to their lack of rationality, they cannot directly guide fertilization. How to accurately apply nitrogen fertilizer during the tillering stage to stabilize rice yield is an urgent problem to be solved in the current large-scale rice production process.
    UNASSIGNED: WOFOST is a highly mechanistic crop growth model that can effectively simulate the effects of fertilization on rice growth and development. However, due to its lack of spatial heterogeneity, its ability to simulate crop growth at the field level is weak. This study is based on UAV remote sensing to obtain hyperspectral data of rice canopy and assimilation with the WOFOST crop growth model, to study the decision-making method of nitrogen fertilizer application during the rice tillering stage. Extracting hyperspectral features of rice canopy using Continuous Projection Algorithm and constructing a hyperspectral inversion model for rice biomass based on Extreme Learning Machine. By using two data assimilation methods, Ensemble Kalman Filter and Four-Dimensional Variational, the inverted biomass of the rice biomass hyperspectral inversion model and the localized WOFOST crop growth model were assimilated, and the simulation results of the WOFOST model were corrected. With the average yield as the goal, use the WOFOST model to formulate fertilization decisions and create a fertilization prescription map to achieve precise fertilization during the tillering stage of rice.
    UNASSIGNED: The research results indicate that the training set R2 and RMSE of the rice biomass hyperspectral inversion model are 0.953 and 0.076, respectively, while the testing set R2 and RMSE are 0.914 and 0.110, respectively. When obtaining the same yield, the fertilization strategy based on the ENKF assimilation method applied less fertilizer, reducing 5.9% compared to the standard fertilization scheme.
    UNASSIGNED: This study enhances the rationality of unmanned aerial vehicle remote sensing machines through data assimilation, providing a new theoretical basis for the decision-making of rice fertilization.
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  • 文章类型: Journal Article
    这项研究通过分析光谱特征的微小变化来研究高光谱成像在识别陈旧食品中的用途。提出了一种算法,用于检测光谱特征的细微变化,并通过使用光谱辐射计获取的掺假食品样品的各个阶段之间的类内分类比较来验证。分析揭示,光谱角度映射器证明对于可消费食品的类别间分类是有效的,但在对同一类别内的光谱特征的轻微变化进行分类时面临挑战。相比之下,DNA编码证明了可靠性,尽管生成的码字与每个波段接收到的反射率的实际强度无关。DNA编码可以深入了解每个波段的吸光度或反射率的性质,使其成为类内分类的有价值的工具。此外,一个新的概念称为频谱速度引入子类模式匹配。这种单像素分析方法依赖于从光谱特征导出的人工构建的nD向量。研究结果表明,高光谱成像和DNA编码的结合为消耗性食品的质量保证提供了有价值的工具,并证明了其确保食品安全和质量的潜力,最终为人类健康做出贡献。
    This study examines the use of hyperspectral imaging for the identification of stale food items by analyzing minute changes in their spectral signatures. An algorithm is proposed for the detection of subtle alterations in spectral signatures and is validated through intra-class classification comparisons among various stages of adulterating food samples acquired using a spectroradiometer. The analysis reveals that the spectral angle mapper proves effective for inter-class classification of consumable food items but faces challenges in classifying slight changes in spectral signatures within the same category. In contrast, DNA encoding demonstrates reliability, despite the generated code-words being independent of the actual intensity of received reflectance at each band. DNA encoding can provide insights into the nature of absorbance or reflectance at each band, making it a valuable tool for intra-class classification. Additionally, a novel concept called spectral velocity is introduced for subclass pattern matching. This method of single-pixel analysis relies on artificially constructed nD-vectors derived from spectral signatures. The findings suggest that the combination of hyperspectral imaging and DNA encoding offers a valuable tool for the quality assurance of consumable food items and demonstrates its potential for ensuring food safety and quality, ultimately contributing to human health.
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  • 文章类型: Journal Article
    The biodiversity of grasslands is important for ecosystem function and health. The protection and mana-gement of grassland biodiversity requires the collection of the information on plant diversity. Hyperspectral remote sensing, with its unique advantages of extensive coverage and high spectral resolution, offers a new solution for long-term monitoring of plant diversity. We first reviewed the development history of hyperspectral remote sensing technology, emphasized its advantages in monitoring grassland plant diversity, and further analyzed its specific applications in this field. Finally, we discussed the challenges faced by hyperspectral remote sensing technology in its applications, such as the complexity of data processing, accuracy of algorithms, and integration with ground-based remote sensing data, and proposes prospects for future research directions. With the advancement of remote sensing technology and the integrated application of multi-source data, hyperspectral remote sensing would play an increasingly important role in grassland ecological monitoring and biodiversity conservation, which could provide scientific basis and technical support for global ecological protection and sustainable development.
    草原的生物多样性具有多种生态功能,而草原生物多样性的保护与管理工作需要收集草原的植物多样性信息。高光谱遥感以其独特的大范围覆盖和高光谱分辨率优势,为草原植物多样性的长期监测提供了新的解决方案。本文首先回顾了高光谱遥感技术的发展历程,强调了高光谱数据在草原植物多样性监测中的独特优势,并进一步分析了其在草原植物多样性监测中的具体应用。最后,讨论了高光谱遥感技术在当前应用中面临的挑战,如数据处理复杂性、算法精度,以及与地面遥感数据的整合问题,并对未来研究方向提出展望。随着遥感技术的不断进步和多源数据的综合应用,高光谱遥感将在草原生态监测与生物多样性保护方面发挥更加重要的作用,为全球生态保护和可持续发展提供科学依据和技术支持。.
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  • 文章类型: English Abstract
    Rapid acquisition of the data of soil moisture content (SMC) and soil organic matter (SOM) content is crucial for the improvement and utilization of saline alkali farmland soil. Based on field measurements of hyperspectral reflectance and soil properties of farmland soil in the Hetao Plain, we used a competitive adaptive reweighted sampling algorithm (CARS) to screen sensitive bands after transforming the original spectral reflectance (Ref) into a standard normal variable (SNV). Strategies Ⅰ, Ⅱ, and Ⅲ were used to model the input variables of Ref, Ref SNV, Ref-SNV+ soil covariate (SC), and digital elevation model (DEM). We constructed SMC and SOM estimation models based on random forest (RF) and light gradient boosting machine (LightGBM), and then verified and compared the accuracy of the models. The results showed that after CARS screening, the sensitive bands of SMC and SOM were compressed to below 3.3% of the entire band, which effectively optimized band selection and reduced redundant spectral information. Compared with the LightGBM model, the RF model had higher accuracy in SMC and SOM estimation, and the input variable strategy Ⅲ was better than Ⅱ and Ⅰ. The introduction of auxiliary variables effectively improved the estimation ability of the model. Based on comprehensive analysis, the coefficient of determination (Rp2), root mean square error (RMSE), and relative analysis error (RPD) of the SMC estimation model validation based on strategy Ⅲ-RF were 0.63, 3.16, and 2.01, respectively. The SOM estimation models based on strategy Ⅲ-RF had Rp2, RMSE, and RPD of 0.93, 1.15, and 3.52, respectively. The strategy Ⅲ-RF model was an effective method for estimating SMC and SOM. Our results could provide a new method for the rapid estimation of soil moisture and organic matter content in saline alkali farmland.
    快速获取土壤含水率(SMC)和土壤有机质(SOM)含量对于盐碱农田土壤的改良利用至关重要。本研究基于河套平原农田土壤野外高光谱反射率和土壤属性实测数据,对原始光谱反射率(Ref)进行标准正态变量(SNV)转换后,采用竞争性自适应重加权采样算法(CARS)筛选敏感波段,然后分别以Ref、Ref-SNV和Ref-SNV+土壤协变量(SC)及数字高程模型(DEM)作为建模输入变量的策略Ⅰ、Ⅱ和Ⅲ,基于随机森林(RF)和轻梯度提升机(LightGBM)建立SMC和SOM估算模型,并对模型精度进行验证和对比。结果表明:经CARS筛选后,SMC和SOM敏感波段压缩至全波段的3.3%以下,有效优化波段选择,减少了冗余光谱信息。与LightGBM 模型相比,RF模型在SMC和SOM估算中精度更高,输入变量策略Ⅲ优于Ⅱ和Ⅰ,辅助变量的引入有效提升了模型的估算能力。综合分析,基于策略Ⅲ-RF的SMC估算模型验证决定系数(Rp2)、均方根误差(RMSE)和相对分析误差(RPD)分别为0.63、3.16和2.01,基于策略Ⅲ-RF的SOM估算模型Rp2、RMSE和RPD分别为0.93、1.15和3.52,策略Ⅲ-RF模型是估算土壤水分和土壤有机质的有效方法。研究结论可为盐碱农田土壤水分和有机质含量快速估算提供新方法。.
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  • 文章类型: Journal Article
    近年来,对内河水质精确管理的需求不断增加,提高了实时的必要性,快速,和持续监测水的状况。通过远程分析水体的光学性质,无人机(UAV)高光谱成像技术可以在不直接接触的情况下评估水质,提出了一种监测河流状况的新方法。然而,目前这项技术存在一些挑战,限制了这项技术的推广应用,如不足的传感器校准,大气校正算法,和非水色参数建模的局限性。本文评估了传统传感器校准方法的优缺点,并考虑了影响校准精度的传感器老化和不利天气条件等因素。它表明未来的改进应该以硬件增强为目标,精炼模型,和减轻外部干扰,以确保精确的光谱数据采集。此外,本文总结了各种传统大气校正方法的局限性,例如复杂的计算要求和对多个大气参数的需要。它讨论了该技术的发展趋势,并提出通过简化输入参数和建立适应性校正算法来简化大气校正过程。简化这些过程可以显着提高大气校正的准确性和可行性。为了解决有关非水色参数和变化的水文条件的水质反演模型的可转移性问题,本文建议探索光谱辐照度之间的物理关系,太阳天顶角,以及与水成分的相互作用。通过理解这些关系,可以开发更准确和可转移的反演模型,提高水质评价的整体效果。通过利用高光谱传感器的灵敏度和多功能性,并整合跨学科方法,可以建立一个全面的水质评估数据库。这个数据库可以快速,实时监测非水色参数,为内河水质的精确管理提供有价值的见解。
    In recent years, increasing demand for inland river water quality precision management has heightened the necessity for real-time, rapid, and continuous monitoring of water conditions. By analyzing the optical properties of water bodies remotely, unmanned aerial vehicle (UAV) hyperspectral imaging technology can assess water quality without direct contact, presenting a novel method for monitoring river conditions. However, there are currently some challenges to this technology that limit the promotion application of this technology, such as underdeveloped sensor calibration, atmospheric correction algorithms, and limitations in modeling non-water color parameters. This article evaluates the advantages and disadvantages of traditional sensor calibration methods and considers factors like sensor aging and adverse weather conditions that impact calibration accuracy. It suggests that future improvements should target hardware enhancements, refining models, and mitigating external interferences to ensure precise spectral data acquisition. Furthermore, the article summarizes the limitations of various traditional atmospheric correction methods, such as complex computational requirements and the need for multiple atmospheric parameters. It discusses the evolving trends in this technology and proposes streamlining atmospheric correction processes by simplifying input parameters and establishing adaptable correction algorithms. Simplifying these processes could significantly enhance the accuracy and feasibility of atmospheric correction. To address issues with the transferability of water quality inversion models regarding non-water color parameters and varying hydrological conditions, the article recommends exploring the physical relationships between spectral irradiance, solar zenith angle, and interactions with water constituents. By understanding these relationships, more accurate and transferable inversion models can be developed, improving the overall effectiveness of water quality assessment. By leveraging the sensitivity and versatility of hyperspectral sensors and integrating interdisciplinary approaches, a comprehensive database for water quality assessment can be established. This database enables rapid, real-time monitoring of non-water color parameters which offers valuable insights for the precision management of inland river water quality.
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