The brown marmorated stink bug (BMSB), Halyomorpha halys, is an invasive insect pest of global importance that damages several crops, compromising agri-food production. Field monitoring procedures are fundamental to perform risk assessment operations, in order to promptly face crop infestations and avoid economical losses. To improve pest management, spectral cameras mounted on Unmanned Aerial Vehicles (UAVs) and other Internet of Things (IoT) devices, such as smart traps or unmanned ground vehicles, could be used as an innovative technology allowing fast, efficient and real-time monitoring of insect infestations. The present study consists in a preliminary evaluation at the laboratory level of Near Infrared Hyperspectral Imaging (NIR-HSI) as a possible technology to detect BMSB specimens on different vegetal backgrounds, overcoming the problem of BMSB mimicry. Hyperspectral images of BMSB were acquired in the 980-1660 nm range, considering different vegetal backgrounds selected to mimic a real field application scene. Classification models were obtained following two different chemometric approaches. The first approach was focused on modelling spectral information and selecting relevant spectral regions for discrimination by means of sparse-based variable selection coupled with Soft Partial Least Squares Discriminant Analysis (s-Soft PLS-DA) classification algorithm. The second approach was based on modelling spatial and spectral features contained in the hyperspectral images using Convolutional Neural Networks (CNN). Finally, to further improve BMSB detection ability, the two strategies were merged, considering only the spectral regions selected by s-Soft PLS-DA for CNN modelling.
翻译:为改进虫害管理,在无人驾驶航空飞行器(UAVs)和其他事物互联网(IoT)装置上安装的光谱照相机(智能陷阱或无人驾驶地面飞行器)可作为一种具有全球重要性的侵入性昆虫虫害,破坏若干作物,损害农业食品生产。实地监测程序对于开展风险评估行动至关重要,以便迅速面对作物虫害和避免经济损失。为改善害虫管理,在无人驾驶航空飞行器(UAVs)和其他事物互联网(IoT)装置上安装了光谱照相机,如智能陷阱或无人驾驶地面飞行器等,可以作为一种具有全球重要性的侵入性昆虫病虫害,从而能够快速、高效和实时监测昆虫虫害。本研究是在近红外超红外光谱超光谱成像实验室一级进行初步评估的。在两种不同的红外光谱超光谱图像模型模型模型模型化模型分析(NRIS-HSMS)中,在内部光谱级模型分析中,以最不易变异的模型分析方法(SLS-LS-S-CS-S-S-S-Sqlal-Sermal laeval laeval ) 分析区域。