Li Wenyong, Yang Zhankui, Lv Jiawei, Zheng Tengfei, Li Ming, Sun Chuanheng
National Engineering Research Center for Information Technology in Agriculture, Beijing, China.
College of Computer Science and Technology, Beijing University of Technology, Beijing, China.
Front Plant Sci. 2022 Jun 28;13:915543. doi: 10.3389/fpls.2022.915543. eCollection 2022.
One fundamental component of Integrated pest management (IPM) is field monitoring and growers use information gathered from scouting to make an appropriate control tactics. Whitefly () and thrips () are two most prominent pests in greenhouses of northern China. Traditionally, growers estimate the population of these pests by counting insects caught on sticky traps, which is not only a challenging task but also an extremely time-consuming one. To alleviate this situation, this study proposed an automated detection approach to meet the need for continuous monitoring of pests in greenhouse conditions. Candidate targets were firstly located using a spectral residual model and then different color features were extracted. Ultimately, Whitefly and thrips were identified using a support vector machine classifier with an accuracy of 93.9 and 89.9%, a true positive rate of 93.1 and 80.1%, and a false positive rate of 9.9 and 12.3%, respectively. Identification performance was further tested comparison between manual and automatic counting with a coefficient of determination, , of 0.9785 and 0.9582. The results show that the proposed method can provide a comparable performance with previous handcrafted feature-based methods, furthermore, it does not require the support of high-performance hardware compare with deep learning-based method. This study demonstrates the potential of developing a vision-based identification system to facilitate rapid gathering of information pertaining to numbers of small-sized pests in greenhouse agriculture and make a reliable estimation of overall population density.
综合虫害管理(IPM)的一个基本组成部分是田间监测,种植者利用从巡查中收集到的信息来制定适当的控制策略。粉虱( )和蓟马( )是中国北方温室中最突出的两种害虫。传统上,种植者通过计算粘虫板上捕获的昆虫数量来估计这些害虫的种群数量,这不仅是一项具有挑战性的任务,而且极其耗时。为了缓解这种情况,本研究提出了一种自动检测方法,以满足温室条件下对害虫进行连续监测的需求。首先使用光谱残差模型定位候选目标,然后提取不同的颜色特征。最终,使用支持向量机分类器识别粉虱和蓟马,准确率分别为93.9%和89.9%,真阳性率分别为93.1%和80.1%,假阳性率分别为9.9%和12.3%。通过手工计数和自动计数之间的比较进一步测试识别性能,决定系数 分别为0.9785和0.9582。结果表明,所提出的方法可以提供与以前基于手工特征的方法相当的性能,此外,与基于深度学习的方法相比,它不需要高性能硬件的支持。本研究证明了开发基于视觉的识别系统的潜力,以促进温室农业中与小型害虫数量相关的信息的快速收集,并对总体种群密度进行可靠估计。