Zu Qin, Zhang Shui-fa, Cao Yang, Zhao Hui-yi, Dang Chang-qing
Guang Pu Xue Yu Guang Pu Fen Xi. 2015 Feb;35(2):479-85.
Weeds automatic identification is the key technique and also the bottleneck for implementation of variable spraying and precision pesticide. Therefore, accurate, rapid and non-destructive automatic identification of weeds has become a very important research direction for precision agriculture. Hyperspectral imaging system was used to capture the hyperspectral images of cabbage seedlings and five kinds of weeds such as pigweed, barnyard grass, goosegrass, crabgrass and setaria with the wavelength ranging from 1000 to 2500 nm. In ENVI, by utilizing the MNF rotation to implement the noise reduction and de-correlation of hyperspectral data and reduce the band dimensions from 256 to 11, and extracting the region of interest to get the spectral library as standard spectra, finally, using the SAM taxonomy to identify cabbages and weeds, the classification effect was good when the spectral angle threshold was set as 0. 1 radians. In HSI Analyzer, after selecting the training pixels to obtain the standard spectrum, the SAM taxonomy was used to distinguish weeds from cabbages. Furthermore, in order to measure the recognition accuracy of weeds quantificationally, the statistical data of the weeds and non-weeds were obtained by comparing the SAM classification image with the best classification effects to the manual classification image. The experimental results demonstrated that, when the parameters were set as 5-point smoothing, 0-order derivative and 7-degree spectral angle, the best classification result was acquired and the recognition rate of weeds, non-weeds and overall samples was 80%, 97.3% and 96.8% respectively. The method that combined the spectral imaging technology and the SAM taxonomy together took full advantage of fusion information of spectrum and image. By applying the spatial classification algorithms to establishing training sets for spectral identification, checking the similarity among spectral vectors in the pixel level, integrating the advantages of spectra and images meanwhile considering their accuracy and rapidity and improving weeds detection range in the full range that could detect weeds between and within crop rows, the above method contributes relevant analysis tools and means to the application field requiring the accurate information of plants in agricultural precision management
杂草自动识别是变量喷雾和精准施药的关键技术,也是其实施的瓶颈。因此,准确、快速且无损的杂草自动识别已成为精准农业非常重要的研究方向。利用高光谱成像系统采集波长范围为1000至2500nm的甘蓝幼苗以及五种杂草(如藜、稗草、牛筋草、马唐和狗尾草)的高光谱图像。在ENVI中,利用MNF旋转实现高光谱数据的降噪和去相关性,将波段维度从256维降至11维,提取感兴趣区域得到光谱库作为标准光谱,最后使用光谱角匹配(SAM)分类法识别甘蓝和杂草,当光谱角阈值设置为0.1弧度时,分类效果良好。在HSI Analyzer中,选择训练像素获得标准光谱后,使用SAM分类法区分杂草和甘蓝。此外,为了定量测量杂草的识别准确率,将具有最佳分类效果的SAM分类图像与人工分类图像进行比较,获取杂草和非杂草的统计数据。实验结果表明,当参数设置为5点平滑、零阶导数和7度光谱角时,获得了最佳分类结果,杂草、非杂草和总体样本的识别率分别为80%、97.3%和96.8%。将光谱成像技术和SAM分类法相结合的方法充分利用了光谱和图像的融合信息。通过应用空间分类算法建立光谱识别训练集,在像素级别检查光谱向量之间的相似度,同时综合光谱和图像的优势,兼顾准确性和快速性,提高了在作物行之间和内部检测杂草的全范围杂草检测能力,该方法为农业精准管理中需要植物准确信息的应用领域提供了相关分析工具和手段。