Department of Electrical and Electronic Engineering, University of Manchester, Manchester, UK.
Department of Plant and Microbial Biology, North Carolina State University, Raleigh, NC, USA.
Sci Rep. 2022 Feb 24;12(1):3113. doi: 10.1038/s41598-022-06372-8.
Cassava brown streak disease (CBSD) is an emerging viral disease that can greatly reduce cassava productivity, while causing only mild aerial symptoms that develop late in infection. Early detection of CBSD enables better crop management and intervention. Current techniques require laboratory equipment and are labour intensive and often inaccurate. We have developed a handheld active multispectral imaging (A-MSI) device combined with machine learning for early detection of CBSD in real-time. The principal benefits of A-MSI over passive MSI and conventional camera systems are improved spectral signal-to-noise ratio and temporal repeatability. Information fusion techniques further combine spectral and spatial information to reliably identify features that distinguish healthy cassava from plants with CBSD as early as 28 days post inoculation on a susceptible and a tolerant cultivar. Application of the device has the potential to increase farmers' access to healthy planting materials and reduce losses due to CBSD in Africa. It can also be adapted for sensing other biotic and abiotic stresses in real-world situations where plants are exposed to multiple pest, pathogen and environmental stresses.
木薯褐条病(CBSD)是一种新兴的病毒性疾病,可大幅降低木薯的产量,而仅引起感染后期出现的轻微气生症状。早期检测 CBSD 可实现更好的作物管理和干预。目前的技术需要实验室设备,劳动强度大,且往往不够准确。我们开发了一种手持式主动多光谱成像(A-MSI)设备,并结合机器学习,可实时进行早期 CBSD 检测。与被动 MSI 和传统相机系统相比,A-MSI 的主要优势在于提高了光谱信噪比和时间可重复性。信息融合技术还进一步结合了光谱和空间信息,以可靠地识别特征,在接种后 28 天,就能区分易感和耐病品种的健康木薯植株与感染 CBSD 的植株。该设备的应用有可能增加农民获得健康种植材料的机会,并减少非洲因 CBSD 造成的损失。它还可以适应于在植物受到多种病虫害和环境胁迫的现实情况下,探测其他生物和非生物胁迫。