On the benefit of topographic dictionaries for detecting disease symptoms on hyperspectral 3D plant models

R. Roscher, J. Behmann, Anne-Katrin Mahlein, L. Plümer
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引用次数: 1

Abstract

We analyze the benefit of using topographic dictionaries for a sparse representation (SR) approach for the detection of Cercospora leaf spot disease symptoms on sugar beet plants. Topographic dictionaries are an arranged set of basis elements in which neighbored dictionary elements tend to cause similar activations in the SR approach. In this paper, the dictionary is obtained from samples of a healthy plant and partly build in a topographic way by using hyperspectral as well as geometry information, i.e. depth and inclination. It turns out that hyperspectral signals of leafs show a typical structure depending on depth and inclination and thus, both influences can be disentangled in our approach. Rare signals which do not fit into this model, e.g. leaf veins, are also captured in the dictionary in a non-topographic way. A reconstruction error index is used as indicator, in which disease symptoms can be distinguished from healthy plant regions. The advantage of the presented approach is that full spectral and geometry information is needed only once to built the dictionary, whereas the sparse reconstruction is done solely on hyperspectral information.
浅谈地形词典对高光谱三维植物模型疾病症状检测的益处
我们分析了使用地形字典进行稀疏表示(SR)方法检测甜菜根孢子叶斑病症状的好处。地形字典是一组排列好的基元素,在SR方法中,邻近的字典元素往往会引起类似的激活。在本文中,词典是从健康植物样本中获得的,并利用高光谱和几何信息(即深度和倾斜度)以地形方式部分构建。结果表明,叶片的高光谱信号显示出一种典型的结构,这取决于深度和倾角,因此,这两种影响都可以在我们的方法中解开。不适合这个模型的罕见信号,例如叶脉,也以非地形的方式被捕获在字典中。利用重建误差指数作为指标,将疾病症状与健康植物区区分开来。该方法的优点是只需要一次全光谱和几何信息来构建字典,而只需要高光谱信息进行稀疏重建。
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