Tyystjärvi E, Koski A, Keränen M, Nevalainen O
University of Turku, Department of Biology, Laboratory of Plant Physiology, BioCity A, Finland.
Biophys J. 1999 Aug;77(2):1159-67. doi: 10.1016/S0006-3495(99)76967-5.
We identify objects from their visually observable morphological features. Automatic methods for identifying living objects are often needed in new technology, and these methods try to utilize shapes. When it comes to identifying plant species automatically, machine vision is difficult to implement because the shapes of different plants overlap and vary greatly because of different viewing angles in field conditions. In the present study we show that chlorophyll a fluorescence, emitted by plant leaves, carries information that can be used for the identification of plant species. Transient changes in fluorescence intensity when a light is turned on were parameterized and then subjected to a variety of pattern recognition procedures. A Self-Organizing Map constructed from the fluorescence signals was found to group the signals according to the phylogenetic origins of the plants. We then used three different methods of pattern recognition, of which the Bayesian Minimum Distance classifier is a parametric technique, whereas the Multilayer Perceptron neural network and k-Nearest Neighbor techniques are nonparametric. Of these techniques, the neural network turned out to be the most powerful one for identifying individual species or groups of species from their fluorescence transients. The excellent recognition accuracy, generally over 95%, allows us to speculate that the method can be further developed into an application in precision agriculture as a means of automatically identifying plant species in the field.
我们通过视觉可观察到的形态特征来识别物体。在新技术中,常常需要自动识别生物物体的方法,这些方法试图利用形状。在自动识别植物物种方面,机器视觉难以实现,因为不同植物的形状相互重叠,并且由于田间条件下不同的观察角度而差异很大。在本研究中,我们表明植物叶片发出的叶绿素a荧光携带的信息可用于植物物种的识别。当光照开启时,荧光强度的瞬态变化被参数化,然后进行各种模式识别程序。发现由荧光信号构建的自组织映射根据植物的系统发育起源对信号进行分组。然后我们使用了三种不同的模式识别方法,其中贝叶斯最小距离分类器是一种参数技术,而多层感知器神经网络和k近邻技术是非参数技术。在这些技术中,神经网络被证明是从荧光瞬态识别单个物种或物种组最有效的方法。通常超过95%的优异识别准确率使我们推测该方法可以进一步发展成为精准农业中的一种应用,作为在田间自动识别植物物种的一种手段。